Abstract
A user-friendly and affordable broad-band digital Near Infrared (NIR) camera (Canon PowerShot S110 NIR) was compared with a narrow-band reflectance spectrometer (USB2000, Ocean Optics) at leaf scale for monitoring changes in response to drought of three ecologically contrasting Quercus species (Q. robur, Q. pubescens, and Q. ilex). We aimed to (a) compare vegetation indices (VIs; that is: NDVI, Normalized Difference Vegetation Index; GNDVI, Green NDVI and NIRv, near-infrared reflectance of vegetation) retrieved by NIR-camera and spectrometer in order to test the reliability of a simple, low-cost, and rapid setup for widespread field applications; (b) to assess if NIR-camera VIs might be used to quantify water stress in oak seedlings; and (c) to track changes in leaf chlorophyll content. The study was carried out during a water stress test on 1-year-old seedlings in a greenhouse. The camera detected plant status in response to drought with results highly comparable to the visible/NIR (VIS/NIR) spectrometer (by calibration and standard geometry). Consistency between VIs and morpho-physiological traits was higher in Q. robur, the most drought-sensitive among the three species. Chlorophyll content was estimated with a high goodness-of-fit by VIs or reflectance bands in the visible range. Overall, NDVI performed better than GNDVI and NIRv, and VIs performed better than single bands. Looking forward, NIR-camera VIs are adequate for the early monitoring of drought stress in oak seedlings (or small trees) in the post-planting phase or in nursery settings, thus offering a new, reliable alternative for when costs are crucial, such as in the context of restoration programs.
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Introduction
In forestry—where extent, location, and/or terrain morphology hinder the efforts to effectively and extensively monitor plant physiological traits—the application of simple, rapid, and cost-effective digital photographic methods would be advantageous for tracking plant cover (Salas-Aguilar et al. 2017), phenology (Richardson et al. 2018), and physiology (Keenan et al. 2014). These techniques could be especially useful in evaluating afforestation/reforestation or forest restoration project success (Vallauri et al. 2005), and, more generally, for tree seedling quality assessment and phenotyping (do Amaral et al. 2019). In response to stresses, leaf traits change with plant and environmental conditions over a wide range of timescales, involving their biochemical composition, physiology, structure, and economics (growth and shedding; e.g., Osakabe et al. 2014; Choat et al. 2018). Although highly reliable biochemical and ecophysiological protocols remain the state-of-the-art for field assessments of leaf traits, the development of cost-efficient and non-destructive methods that are aimed at monitoring leaf traits at the plant or stand scale is increasingly gaining importance (Cotrozzi et al. 2018; Chawade et al. 2019).
Real-time plant status monitoring would be useful for different forest restoration aspects, such as to quantify seedling status (before and during outplanting phase), in order to adopt time effective management techniques for plant survival and productivity (Cotrozzi et al. 2017; Löf et al. 2019) or to promote more sustainable practices (Reiche et al. 2018; Löf et al. 2019). Other applications concern actions to deal with climate change challenges (Reyer et al. 2013; Trumbore et al. 2015), especially those linked to drought (Zhao and Running 2010; IPCC 2014; Green et al. 2019) and extreme events, such as heatwaves (Hoerling et al. 2012; Schuldt et al. 2020), which begin to hit also regions that currently only experience limited dry periods (Eckstein et al. 2019). Recently, in the framework of water security, nature-based solutions and a more sustainable use of water-resources, it is required to rapidly and carefully detect plant status, in order to become operational in many activities (Harou et al. 2009; Cohen-Shacham et al. 2016), such as nursery (Fulcher et al. 2016; Knight et al. 2019) or precision agriculture and forestry (FAO 2013; Fardusi et al. 2017; Mereu et al. 2018).
Remote sensing (e.g., Iglhaut et al. 2019; Puletti et al. 2019) or leaf spectroscopy (e.g., Colombo et al. 2012; Cotrozzi and Couture 2019; Jacquemoud and Ustin 2019) have great potential to address these tasks (Humplík et al. 2015; Mahlein et al. 2018). Moreover, reliable, fast, and user-friendly monitoring systems at affordable costs would facilitate the spread of breakthrough technology, particularly by remote and “near-surface” sensing techniques (Baresel et al. 2017; Di Gennaro et al. 2018). Recently, near-surface sensing and high pixel resolution imagery allowed the targeting of single plant parts (e.g., leaf, stem or canopy by segmentation techniques, Perez-Sanz et al. 2017; Chianucci et al. 2019). Hyper- or multi-spectral sensors provide reasonably high spatial and spectral resolution to infer many structural (leaf area index and canopy cover) and biochemical (nitrogen and chlorophyll content) canopy attributes down to leaf scale.
Chlorophyll content is an important bio-indicator for many physiological processes linked to phenology, photosynthetic capacity (Croft et al. 2017), and stress detection, including drought stress; (Esteban et al. 2015), and—unlike other foliar pigments (Ollinger 2011)—it can be estimated with high accuracy (Homolová et al. 2013). Thus, in the last decades, several approaches have been proposed to estimate chlorophyll content at different spectral (Blackburn 1998) and spatial resolutions (Sonobe and Wang 2017; Croft et al. 2020), also by simple and robust metrics, such as Vegetation Indices (VIs; Alberton et al. 2017; Yang et al. 2017; Zhang et al. 2019), and user-friendly instruments, such as digital NIR-cameras (e.g., Chung et al. 2018). Unfortunately, prices and technical requirements, such as temperature stability, are presently limiting the widespread use of high-resolution multispectral digital cameras; whereas, more cost-affordable digital multispectral cameras (e.g., Parrot Sequoia or MicaSense UAV cameras) gain field for agricultural and forest monitoring. However, the latter require demanding post-processing efforts in imagery co-registration (e.g., Nebiker et al. 2016), as their multi-optics acquire different parts of the electromagnetic spectrum from different view angles. In this scenario, low-cost (about one-tenth the cost of a multispectral camera), user-friendly and handheld compact NIR-cameras, which acquire Green–Red-NIR images (as used in this study) could offer several advantages for their simplicity in use: no co-registration is required (due to their single optic) and after a minimal training effort they would offer several useful applications in environmental management.
In this framework, we aimed to compare at leaf scale an affordable NIR-camera with narrow-band reflectance spectrometer in order to explore its reliability for monitoring reflectance indices and chlorophyll changes in response to drought in Quercus; one of the most important tree genus in the northern hemisphere (Dey et al. 2012). Despite many studies on remote or proximal sensing (e.g., Thenkabail et al. 2019), comparative studies between these two handheld instruments remain, to our knowledge, scarce (Ritchie 2007; Putra and Soni 2017). Our aims were threefold: (a) to compare VIs calculated by the broad-band NIR digital-camera with those of the narrow-band spectrometer to test the reliability of a simple and affordable setup for widespread field applications; (b) to assess whether NIR-camera VIs might be used to quantify water stress in oak seedlings; and (c) to track changes in leaf chlorophyll content in response to drought for three important European oak species, characterized by different ecological water needs.
Materials and methods
Plant material
The study was carried out in early summer 2018 under semi-controlled conditions in a nursery greenhouse (Pistoia, Italy; 43.862182 N, 10.980419 E; 43 m a.s.l.) during the second growing season of seedlings of three Quercus species: Q. robur L., Q. pubescens Willd., and Q. ilex L. (hereafter, QR, QP, and QI, respectively), and during a concurrent water stress trial (Mariotti et al. 2019). In 2017, seedlings were grown in 0.65 L containers filled with two substrates (Sub: Peat, Pe; Coconut fiber, Co) and three fertilizations (Fert: nursery standard, St; enriched in K, K; enriched in P, P) resulting in a total of six stocktypes (Sub x Fert; further details in Mariotti et al. 2020). In mid-April 2018, 45 seedlings per stocktype and species (total = 810; 15 seedlings per experimental unit) were transplanted into 3 L pots filled with coconut fiber substrate (without any further fertilization), placed in a greenhouse, where homogeneity of environmental conditions (i.e. PAR, temperature, and air humidity—data not shown) was checked, and kept well-watered until the on-set of the water stress trial.
Water stress: experimental setup and morpho-physiological stress indices
The water stress test lasted two weeks from DOY 178 (T0) to DOY 191 (T1). Seedlings were daily drip-irrigated according to three watering regimes: (1) control (C), where the water delivered to each pot maintained the soil at field capacity (FC, calculated from the daily loss of weight separately for each species); (2) medium water stress (MS), i.e., 50% of FC; (3) high water stress (HS), where the amount of water was calculated to maintain a species-specific threshold of soil humidity defined as highly stressful according to literature; specifically, Früchtenicht et al. (2018) found a high water stress (i.e., predawn branch water potentials below -2 MPa) with volumetric soil water content (SWC) of 13%, 9%, and 6% in QR, QP, and QI, respectively. SWC was monitored every other day by FieldScout TDR 150 (Spectrum Technologies, USA). For spectrometer and NIR camera measurements, 3 mature leaves per pot on 5 pots per treatment (810 leaves in total) were sampled and marked at T0 in order to be re-measured at T1. For HS, fearing high leaf mortality and high response variability among seedlings, an additional sample of 10 leaves (1 leaf per pot) was marked. For further evaluating NIR camera VIs indices against plant status we measured predawn leaf water potential (ѰPDL in MPa; PMS pressure chamber, Co. Corvallis, USA—on one leaf per plant, 4 plants per treatment randomly selected, 216 leaves in total) and early-morning maximum photosynthetic efficiency (Fv/Fm, the ratio of variable, Fv, to maximum, Fm, fluorescence after 45 min dark-adaptation; Handy PEA fluorimeter, Hansatech, UK—1 leaf on 9 plants per treatment, 486 in total), along with total plant height (H) growth during the trial calculated as HT1—HT0 difference. During midday (11:30 to 14:30) and under clear sky conditions, NIR-camera images and leaf reflectance spectrum were taken in that order (and within a few seconds of one another) on the same leaf acclimated to saturating PAR.
NIR-camera vegetation indices
A single-chip camera was used to take leaf images (PowerShot S110 NIR, Canon Inc., Tokyo, Japan), as it offered the advantage to co-register each band by a Bayer color filter at the cost of a partial spectral overlap. Green (G), Red (R), and NIR bands were centered at 550 nm, 625 nm, and 850 nm, respectively. Images were acquired in RAW mode (maximum resolution, focal length = 32 mm, exposure time = 1/125 s, f-value = 5.7) and nadir position (i.e., vertically downward) at a distance of 30 cm from an attached leaf, avoiding shadows or reflections. A 0.6 mm thick barium sulfate panel laid next to the leaf served as a white reference (Knighton and Bugbee 2005). Images were processed using the “dcraw” open-source program (Coffin 2018). In Table 1, selected ‘dcraw’ parameters are reported to capture scene full brightness range at maximum radiometric resolution (16 bit) to preserve the linear dependence of digital numbers (DN) to actual brightness (Chianucci et al. 2019). A segmentation procedure was applied to separate the leaf blade image from the background (Baresel et al. 2017) and leaf reflectance was calculated as DNleaf, x/DNreference, x, where x was G, R, and NIR band, respectively, and DN was the mean digital number either over the whole leaf blade or the white reference. The following vegetation indices (VIs) were calculated—namely, normalized difference vegetation index, NDVI = (NIR − Red)/(NIR + Red), (Rouse et al. 1973); green normalized difference vegetation index, GNDVI = (NIR − Green)/(NIR + Green), (Gitelson et al. 1996), which is also equivalent to minus the normalized difference water index (NDWI, McFeeters 1996) and near‐infrared reflectance of vegetation, NIRv = NDVI · NIR (Badgley et al. 2017), an index proposed as a proxy of light-saturated photosynthesis (Amax) at leaf scale for deciduous tree species included Quercus (Wong et al. 2020).
Spectrometer vegetation indices
Leaf reflectance was measured on the upper leaf blade (in the central and wider part, avoiding midrib and major veins). Two nearby positions were measured with a 45° off-nadir and backscatter mode geometry by a 10 bit VIS/NIR spectrometer (USB2000, Ocean Optics, Orlando, USA; 0.4 nm nominal resolution; range = 350–1100 nm) connected to a low-OH optical bifurcated fiber (QR200-7-VIS–NIR, OceanOptics; 25° field of view) and a stabilized (and 45′ preheated) light source (LS-1, Ocean Optics). Spectral reflectance (Rwl, wl = wavelength in nm) was calculated with respect to a 99% certified Lambertian white reference (Spectralon White Reference, Labsphere Inc., NH, USA) after electric noise (dark) removal and Savitzky-Golay smoothing (3rd order polynomial on a 20 nm window). Reflectance was extracted for the three nominal NIR-camera bands in order to calculate narrow-band VIs. Moreover, the red-edge bands at 705 nm and 750 nm were used to determine total (a + b) chlorophyll content (Cab, μg cm−2) by ND705 = (R750 – R705)/(R750 + R705) (Gitelson and Merzlyak 1994; Sims and Gamon 2002). The following quadratic equation: Cab (in μg cm−2) = 0.4936485 + 50.26586 · ND705 + 90.740 · ND7052 (R2 = 0.96, P < 0.0001) was obtained by extracting Cab and ND705 values from Féret et al. (2011) leaf database (there reported under graphical form) by WebPlotDigitalizer v. 4.3 (Rohatgi 2017). Spectrometer reflectance spectra were then classified in Cab classes by step of 5 μg cm−2. Leaf spectra belonging to the lowest (0–5 μg cm−2) Cab class (yellowed to brownish leaves) were hereafter referred to as “discolored.”
Statistical analyses
Statistical analyses were carried out in R v. 3.6.1 (R Development Core Team 2020) using the packages “stats” and “dplyr” (Wickham et al. 2021). Reflectance was reported throughout the paper in percent. NIR-camera and spectrometer comparisons were performed for VIs and NIR-camera nominal bands, averaging (mean) values within the leaf. ANOVA and Tukey’s honest significant difference (HSD) test were performed within species and stocktype to assess differences at α = 0.05 (P ≤ 0.05) among stress treatments for NIR-camera VIs and morpho-physiological stress indices. In case of ANOVA-assumption rejection, a non-parametric Kruskal–Wallis test was applied with differences (P ≤ 0.05) assessed by Dunn test with Holm correction.
Spectrometer reflectance (Rwl) and normalized indices (VI850,wl = (R850 − Rwl)/(R850 + Rwl) were computed with reflectance at 850 nm as NIR. Over the 400–1000 nm spectrometer range, correlograms drew adjusted R2 values vs wavelengths for determining the best ranges for Cab estimation on the base of reflectance (Rwl) or normalized indices (VI850,wl). Here, both linear and non-linear (quadratic and exponential) functions were tested, using single leaf spectra as input.
Results
Comparison between NIR-camera and spectrometer
All NIR-camera and spectrometer VIs were very highly (P ≤ 0.001) correlated over the whole dataset (R2 > 0.89, number of observations = 1794); goodness-of-fit was slightly better both for NDVI and NIRv (R2 = 0.98) than for GNDVI (R2 = 0.92). Conversely, Root Mean Squared Error (RMSE) was below 0.01 for NDVI and GNDVI, and larger (2.86) for NIRv. All indices showed a non-significant intercept and homogenous variances between devices (Levene’s P, NDVI, P = 0.88; NIRv, P = 0.67; GNDVI; P = 0.18). The two devices also showed non-normal distribution (Shapiro P ≤ 0.001), and similar median and min–max ranges for all the three indices (data not shown), despite GNDVI being spread over a lower range. The two instruments were also highly correlated (P ≤ 0.001) for all indices both within date (R2 > 0.89; Fig. 1) and within each oak species (R2 > 0.87). The absence of scattered points in the plots outside the regression line indicated that the mean of the leaf image was always strictly associated to spectrometer point-measurements covering about 0.1 cm2. In all species, R2 values were higher in NIRv (> 0.98), followed by NDVI (from 0.95) and GNDVI (from 0.83). At T1, R2 values above 0.98 were observed for NDVI and NIRv in all oak species, while they ranged from 0.90 (QI) to 0.95 (QR) for GNDVI (graphs not shown).
NIR-camera VIs and morpho-physiological stress indices
At T0, all VIs did not differ among treatments within species (Figs. 2, 3, 4), while at T1, control and medium stress generally differed from high water stress (Table 2), and seedlings under MS never showed lower values than C in any stocktype (Fig. 2).
At T1, NDVI in HS was lower than in C and MS in QR and QI stocktypes (except for Co-K in QI). In QP, within stocktype, generally, no significant difference was observed between HS and C or MS (Fig. 2). For GNDVI, in all stocktypes, the same general picture was found only in QR (HS < MS and C). In the other two species, HS differed from C or MS only in a few cases (Fig. 3). NIRv results were similar to NDVI, apart more clear discrimination in QR (Fig. 4). Consistency of post-hoc (Tukey HSD or Dunn) tests among VIs and morphological and physiological traits at T1 are reported in Table 2, with QR that showed the highest consistency among results of different parameters. In this species, VIs were consistent with predawn leaf water potential (in all stocktypes) and height increment (in 5 out of 6 stocktypes), while in QP and QI this occurred only for some stocktypes. In QP, VIs provided the same results in three stocktypes, and in two of them such results were in accordance with H increment results. In QI, accordance among VIs did not occur: NDVI matched GNDVI in two cases, while NIRv never matched GNDVI but only NDVI in four out of six cases. Excluding QI, correlations between the three VIs, on one hand, and height increment, on the other, were significant despite low r values (Table 3).
Chlorophyll content retrieved by spectrometer
Chlorophyll content (Cab) was not normally distributed (except for MS at T1) and it showed higher values (P ≤ 0.001) at T0 than T1 (Fig. 5). Cab reduction at T1 was significant for all treatments and not only, as expected, for HS (HS: -90%; MS: -20%; C: -17% than T1). Discolored spectra (i.e., Cab < 5 μg cm−2) were observed only in leaves under high stress (52% in total); if discarded, HS Cab values did not significantly deviate from MS (P > 0.15) nor C (P > 0.09). The fraction of discolored leaves differed among species; it was highest in QR (78%) followed by QI (48%) and QP (30%).
The most sensitive spectral ranges to chlorophyll content apart from red-edge were of particular interest, since the high R2 values observed in the red-edge range (around 700 nm) suffered from the circularity inherent in our Cab estimation method due to R705 used in ND705. These were assessed by changes in reflectance (Fig. 6) and by R2 changes with wavelengths between Cab and reflectances or vegetation indices (Fig. 7). Overall, chlorophyll reduction was mainly associated with a progressive reflectance increase in the visible range, in accordance with foliar pigment absorption spectra and PROSPECT radiative transfer model (Jacquemoud and Baret 1990; Ustin and Jacquemoud 2020). In green leaves, minimum reflectance variation was observed at 680 nm, where reflectance markedly increased only in strongly damaged leaves, that is when Cab dropped below 20 μg cm−2 (in QI) or even lower contents for QP and QR, Fig. 6). High responsive regions to Cab reduction covered a wide range from blue-green to red (510–650 nm; P ≤ 0.05 for all wavelengths) with the maximum sensitivity at about 550 nm (Fig. 7); the range included both R550 and R625 NIR-camera nominal bands. High R2 values were observed in a narrower spectral range, i.e., in the green-yellow at T0 and the yellow-orange region at T1 or T0 + T1 (Fig. 7). Among fitting methods, the exponential function returned the best results for Cab estimation (R2 > 0.9 over a 100–120 nm-wide shoulder at T1). This range stretched from 700 nm to about 600 nm (orange) for reflectance, and further to 583 nm for VIs (i.e., till yellow with max R2 at 635 nm in both cases). Quadratic interpolation showed R2 > 0.9 over a more restricted range outside the red-edge, covering about 70 nm for VIs (range: 573–638 nm; max R2 = 0.94 at 603 nm), where reflectance bands also showed good R2 values, with a maximum at 592 nm. Correlograms at T0 (well-watered plants) strongly differed in pattern from T1 and T0 + T1 datasets (which included green and discolored leaves) under several relevant aspects (Fig. 7). Firstly, at T0, linear interpolation fitted the data equally as well as non-linear functions, thus the former should be used in absence of discolored leaves. Secondly, VIs showed a marked fall of R2 (< 0.5) in the red range (650–690 nm) with a minimum R2 at 678 nm, which was also confirmed for reflectance-band correlograms. Then, at T0, high R2 values (> 0.9) were found (both for VIs and reflectance bands and besides red-edge) in a narrow 14 nm-wide range (558–572 nm, green-yellow) with the maximum value (R2 = 0.91) at 565 nm, blue-shifted by about 70 nm in respect to the whole dataset. Moreover, the increase in R2 values due to VI normalization on 850 nm was particularly relevant at T1, when a high variability in Cab was observed. Given the different results between datasets, we further tested the role of HS treatment and discolored leaves: removing HS leaves or even only discolored leaves gave similar correlograms to T0 without relevant differences between linear and non-linear fitting results (Appendix 1 and 2).
Chlorophyll content retrieved by NIR-camera
At leaf level, the NIR-camera showed very high R2 values for Cab estimation by VIs, confirming spectrometer results. The main difference between NDVI and the other two indices (GNDVI and NIRv) or between R625 and R550 was that a single equation was sufficient to estimate Cab in the whole dataset for NDVI only (or R625). For NIRv, GNDVI or R550, it is necessary to discriminate between discolored and non-discolored leaves to reliably estimate chlorophyll content. The exponential fitting function for NDVI for the entire Cab variability observed in the whole dataset (R2 > 0.97, both devices) was reported in Fig. 8. Similarly to NDVI, reflectance at 625 nm (R625) was able to estimate chlorophyll content with R2 of about 0.9 (overall, camera: Cab = 56.431·EXP(− 0.06·R625), R2 = 0.89; spectrometer: Cab = 57.355·EXP(− 0.07·R625), R2 = 0.92). NIR band (R850) was linearly better related to NIRv in green leaves (R2 = 0.567, n = 1572, intercept = 3.187 and slope = 0.702, both P < 0.001) than in discolored leaves (R2 = 0.188, n = 222, intercept = − 3.69, P = 0.073; slope = 0.228, P < 0.001). For the other two VIS (NDVI and GNDVI) these relations were nil (R2 values below 0.003). NIR band was poorly related to Cab (overall, camera: R2 < 0.32; spectrometer: R2 < 0.20); correlation further dropped (R2 < 0.001) within leaf-type group (i.e., discolored and non-discolored). NIR reflectance was higher in discolored (median, IQR = 69, 57–73) than in green (median, IQR = 51, 43–54) leaves. R550 (Green band) estimated worse than GNDVI (Fig. 8) chlorophyll content both in green leaves (Cab = − 1.6234·R550 + 62.954, R2 = 0.64) and discolored leaves (Cab = − 0.0493·R550 + 3.8213, R2 = 0.46). Both GNDVI and R550 showed different equations between discolored and green leaves; the two leaf-types had markedly different slopes (P ≤ 0.05), resulting in a large overlap that limited their general use.
Discussion
VIs comparison between NIR-camera and spectrometer
The simplicity in the use of a NIR camera—being identical to a common RGB camera from the operative point of view—might offer several applications in the field of plant monitoring and forest restoration. The highly comparable results between the NIR-camera and spectrometer VIs were mainly due to a correct determination of leaf reflectance by tracking the subtle differences in illumination using a white reference. In fact, Nebiker et al. (2016) found with the same NIR-camera a low agreement between spectrometer and image NDVIs without calibration, while high correlations in comparing similar devices were reported only with a proper white reference (Di Gennaro et al. 2018; Chianucci et al. 2019). The high goodness-of-fit also held by UAV at the canopy scale over crops (Di Gennaro et al. 2018), grasslands (Von Bueren et al. 2015) or forests (Weil et al. 2017). Our choice to take measurements at midday under clear-sky and high-sun elevation conditions (early-summer) on leaves acclimated to high irradiance might have strongly contributed to the high correlation found between the two devices, confirming leaf scale results observed by Putra and Soni (2017) for NDVI and the better results obtained at high-irradiance than under diffuse light in four broadleaf tree species (Chianucci et al. 2019). Even though a higher camera signal-to-noise ratio was achieved at high irradiance (Granados et al. 2010), leaf acclimation to the measuring light conditions was also an important aspect. A significant change in reflectance was observed above 300 μmol m−2 s−1 photosynthetic active radiation (Wada 2016) and acclimation required more than 30 min for dark to light transition (or vice versa; Dutta et al. 2017). Thus, it is advisable to take measurements under a similar light environment to that experienced by the leaves (better under saturating light) or to complete acquisitions within a few seconds. Moreover, different view/illumination geometries might result in reflection differences among bands due to leaf anisotropy and bidirectional optical properties (BRDF) (Combes et al. 2007). Nevertheless, within a 45° incidence angle, similar reflectance values were observed between nadir and backscatter mode, as in NIR-camera and spectrometer setup (Combes et al. 2007; Biliouris et al. 2009).
Consistency between NIR-camera VIs and morpho-physiological stress indices
Substrate and fertilization introduced a further source of variability in our sample (Mariotti et al. 2020), which has been useful to test the concordance between NIR-camera VIs and ecophysiological indices, which traced the complex plant responses to drought (e.g., Chaves et al. 2003; Gupta et al. 2020). Among the studied oak species, differences existed in the strategies adopted to face water shortages, balance water uptakes with losses, control growth, and promote survival (Gil-Pelegrín et al. 2017). Q. robur was the most vulnerable to drought, preferring temperate climates without a dry season (Ducousso and Bordacs 2004; Mölder et al. 2019; Bert et al. 2020), while the other two oaks (Q. pubescens and Q. ilex)—having both a high tolerance to drought—were mainly found in sub-arid Mediterranean regions (e.g., Gil-Pelegrín et al. 2017).
The morpho-physiological stress indices used in this study were useful to describe both water stress severity and how the plants responded to drought. Height growth rapidly sensed water deficits (Arend et al. 2011), especially in the two deciduous species, Q. robur and Q. pubescens; the slight positive relationship between VIs and height increment observed in both species could be linked both to the short experimental period (two weeks) compared to vegetative season and to the semi-determinate growth pattern of these oak species with recurrent shoot flushes (Collet and Frochot 1996; Mariotti et al. 2015). Such a pattern alternates single flush elongation periods with growth stasis; thus, during a two-week timespan, some seedlings might have been in a stage of growth stasis regardless of water regimes, and this might have affected the strength of the correlation response. In Q. ilex, this relationship was not significant, suggesting a higher tolerance and different strategy to face drought. Similarly, drought reduced light-saturated rate of photosynthetic carbon uptake and stomatal conductance more in QR and QP than in QI (Cocozza et al. 2020). A significant interaction effect between these oak species and drought, as well with other stressors, such as ozone, was observed by Hoshika et al. (2018) and Cotrozzi et al. (2016), indicating different strategies among the three species.
A reduction of ѰPDL under severe stress was found in all species and stocktypes except for standard fertilization for both substrates in Q. pubescens and Q. ilex, suggesting that only these latter species effectively limited transpiration at the cost of a reduction in leaf VIs (and thus chlorophyll content). In Q. pubescens and Q. ilex, Fv/Fm (an absolute measure of PSII photosynthetic efficiency) was found to drop only at a predawn leaf water potential below -4 MPa (Tognetti et al. 1998) showing a marked daily course even at lower ѰPDL values (Méthy et al. 1996). Low Fv/Fm values might reflect either the presence of photodamage to the photosynthetic apparatus due to the scavenging of impaired reactive oxygen species (ROS) or the capability of the leaf to adopt a long-lasting photoprotected state, when the level of light and stress exceeded the capacity to utilize photosynthates (Demmig-Adams et al. 2012; Noctor et al. 2018). Moreover, in response to drought, both Q. ilex and Q. pubescens had an additional defense mechanism to high light decreasing NDVI (and thus chlorophyll content) in leaves; a phenomenon we found more marked in Q. ilex than Q. pubescens. As expected, Q. robur was strongly vulnerable to severe drought, showing a larger reduction in growth, ѰPDL and Fv/Fm, together with changes in VIs consistent to paler leaves in functional (‘green’) leaves. These traits were accompanied by complete leaf desiccation for about two-thirds of the leaves. Leaf mortality, which is commonly observed in this species under drought, has been related to hydraulic failure and its vulnerability to xylem embolism (the highest among the three species; see Lobo et al. 2018).
The absence of a significant effect on growth, VIs, and ecophysiological indices (in all species and stocktypes) with water availability halved compared to field capacity (i.e., in MS) should pave the way to a more sustainable water-resource use when growing these oak species in nurseries, in line with setting research-based best-management practices to minimize water needs as suggested in Majsztrik et al. (2017) review.
Chlorophyll content and optical devices
Chlorophyll content might accurately be retrieved in situ by 705 nm and 750 nm normalized difference index (ND705), where the red-edge band sensed the chlorophyll signal (Sims and Gamon 2002) and the NIR band acts as a reference, since it was not influenced by pigment effects (Féret et al. 2008). The choice of ND705 over other formulations (see Jacquemoud and Ustin 2019 for a detailed list) was driven by the ample Féret et al. (2011) dataset, which allowed to retrieve an empirical, yet robust, equation to estimate chlorophyll content. Recently, a strong and linear relationship between ND705 and chlorophyll concentration (weight/weight) was also reported (Lin et al. 2013).
Our results showed that Cab might be estimated by almost every visible wavelength (above 450 nm), while near-infrared bands were insensitive to chlorophyll content, as NIR reflectance was mainly related to leaf thickness or structure (Féret et al. 2008). Reflectance at 850 nm is moderately related to anatomical leaf parameters both within (as in Q.ilex; Ourcival et al. 1999) and among species, driven by the ratio of mesophyll cell surface to intercellular air spaces (Knapp and Carter 1998; Serrano 2008). With season and drought, we observed an increase in reflectance at 850 nm, amounting to 10% for season in well-watered conditions (C + MS) and to + 12% for severe stress (HS respect to the control) at T1. The high R850 observed under severe stress was due to the presence of discolored leaves (+ 23% respect to control) indicating a relevant change in leaf structure; when excluded, the difference respect to control was negligible (0.3%). Consequently, R850 increase (relative to the control) was consistent in HS with discolored-leaf fraction in crown (and visual perception of plant status) for the three species. Normalization with reflectance at 850 nm improved chlorophyll estimate not only under well-watered conditions but also under all conditions that did not include discolored leaves, indicating a residual effect of leaf structure in the estimate of Cab, which is only partly captured by reflectance at 750 nm.
In this study, NDVI (obtained by 850 nm and 625 nm reflectances) covered nearly the full range of values from 0.04 to 0.96—close to its theoretical values of 0 and 1. Remarkably, the first logarithmic relation between leaf reflectance and total chlorophyll content included reflectance at 625 nm (Benedict and Swidler 1961; Jacquemoud and Ustin 2019). Spectrometer and NIR-camera NDVI, GNDVI, and NIRv were highly correlated with chlorophyll content (NDVI, R2 = 0.94; GNDVI, R2 = 0.72, NIRv, R2 = 0.97), and although few studies compared camera VIs with chlorophyll content, high goodness-of-fit was found for a temperate forest (R2 = 0.73; Yang et al. 2017) or at leaf scale (R2 from 0.82 to 0.93; Hosoi et al. 2019, R2 = 0.94; Chung et al. 2018) with NIR smartphone cameras. Between NDVI and GNDVI or NIRv, the former was a better estimator of Cab, as the latter two were unable to reliably estimate chlorophyll content in the presence of discolored leaves. Nevertheless, when only ‘green’ (that is, ‘not discolored’) leaves were taken into account GNDVI and NIRv performed comparably to NDVI, pointing out the importance of discolored leaves and how to treat them statistically. Accounting for their presence and incidence might be useful to classify water stress intensity and species responses. Moreover, discolored-leaf reflectance spectra might be used as end-members for modeling or up-scaling stress detection to canopy or broader spatial scales. At satellite scale, reflectance at 625 nm was included in WorldView-3 (and WorldView-2) yellow band, ranging from 585 (589) nm to 625 (627) nm (spatial resolution below 2 m; Updike and Comp 2010; Kuester 2016) and showing similar results to the red-edge spectral band (Sibanda et al. 2017). We confirmed the strong relationship to chlorophyll content for WorldView yellow-band nominal spectral-interval, placed next to the 583 nm wavelength, where we found the best R2 between chlorophyll content and VIs normalized with NIR reflectance at 850 nm. Our results were corroborated by several applications of the WorldView yellow band in forestry, from tree species classification (Immitzer et al. 2012; He et al. 2019) to invasive grass detection (Marshall et al. 2012), also by normalized indices (Wolf 2012) and chlorophyll estimation (Lin 2018; Lin and Lin 2019).
Conclusions
According to our results, the use of an affordable NIR-camera might offer a promising and reliable approach, for the following points:
-
to detect vegetation indices (NDVI, GNDVI and NIRv) with results highly comparable to a narrowband VIS/NIR spectrometer (following a simple protocol during image acquisition, i.e., calibration and standard geometry);
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to estimate chlorophyll content with a very high goodness-of-fit by VIs or reflectance bands in the visible range. For general purposes, NDVI performed better than GNDVI and NIRv; vegetation indices performed better than the single reflectance bands. NDVI reliably fitted Cab for the full range of variation given by species, stocktypes and drought stresses. Promising results were observed for GNDVI and NIRv, when discolored leaves were excluded from sample.
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to help in drought-stress early-monitoring in oak seedlings, quantifying water stress occurring over a brief period. Even if the physiological responses of three oak species to drought were different, more negative predawn leaf water potential values were related to a reduction of all VIs (and thus chlorophyll content).
In conclusion, NIR-camera imagery might be applied to drought-stress early-monitoring in oak seedlings, saplings, or small trees in the post-planting phase or in nursery conditions. This approach offers a strongly reliable alternative to data collection where costs and ease of use ae crucial, such as in the context of restoration programs where available financing is usually limited. However, it would be advisable to test a larger set of conditions and plant species to draw more general conclusions.
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Acknowledgements
We wish to thank Fabio Bandini and Stefano Teri (DAGRI, University of Florence) for technical assistance and experiment maintenance. We acknowledge Andrew Francis Speak (DAGRI, University of Florence) for having improved the language editing. We are particularly indebted to Emilio Resta (Vannucci Piante) for sharing his valuable expertise. We are grateful to Vannucci Piante, project partner, for the high quality of the nursery facilities. This study is dedicated to the dear memory of Ivan Pippi (IFAC-CNR, Italy), who introduced SR to the methods and techniques for optical remote sensing. Project: VIAA Vivaistica Innovativa ad Alta Adattabilità Mis-16.2 in Verdi Connessioni in PSR- FEASR 2014-2020 Regione Toscana
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Raddi, S., Giannetti, F., Martini, S. et al. Monitoring drought response and chlorophyll content in Quercus by consumer-grade, near-infrared (NIR) camera: a comparison with reflectance spectroscopy. New Forests 53, 241–265 (2022). https://doi.org/10.1007/s11056-021-09848-z
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DOI: https://doi.org/10.1007/s11056-021-09848-z