Abstract
The imaging hyper-spectrometer is highly susceptible to the presence of noise and its noise removal is regularly necessary before any derivative analysis. A wavelet-based(WT) method is developed to remove noise of hyperspectral imagery data, and commonly used denoising methods such as Savitzky-Golay method(SG), moving average method(MA), and median filter method(MF) are compared with it. Smoothing index(SI) and comprehensive evaluation indicator(η) are designed to evaluate the performance of the four denoising methods quantitatively. The study is based on hyperspectral data of wheat leaves, collected by Pushbroom Imaging Spectrometer (PIS) and ASD Fieldspec-FR2500 (ASD) in the key growth periods. According to SI andη, the denoising performance of the four methods shows that WT>SG=MA>MF and WT>MA>MF>SG, respectively. The comparison results reveal that WT works much better than the others with the SI value 0.28 and η value 5.74E-05. So the wavelet-based method proposed in this paper is an optimal choice to filter the noise, in terms of balancing the contradiction between the smoothing and feature reservation ability.
Chapter PDF
Similar content being viewed by others
References
Wang, J.H., Zhao, C.J., Huang, W.J.: Basis and Application of Quantitative Remote Sensing in Agriculture, pp. 141–184. Science Press, Beijing (2008) (in Chinese)
Singh, C.B., Jayas, D.S., Paliwal, J., White, N.D.G.: Detection of insect-damaged wheat kernels using near-infrared hyperspectral Imaging. Journal of Stored Products Research 45, 151–158 (2009)
Nguyen Do Trong, N., Tsuta, M., Nicola, B.M., De Baerdemaeker, J., Saeys, W.: Prediction of optimal cooking time for boiled potatoes by hyperspectral imaging. Journal of Food Engineering 105, 617–624 (2011)
Liu, L., Ngadi, M.O., Prasher, S.O., Gariépy, C.: Categorization of pork quality using Gabor filter-based hyperspectral imaging technology. Journal of Food Engineering 99, 284–293 (2010)
Yusof, M.R.M.: Trends and Issues in Noise Reduction for Hyperspectral Vegetation Reflectance Spectra. European Journal of Scientific Research 29(3), 404–410 (2009)
Wang, Y., Mo, J.: A New De-Noising Technique for Spectra Based on Mexican Hat Wavelet. Spectroscopy and Spectral Analysis 25(1), 124–127 (2005)
Zhou, D., Wang, Q., Tian, Q., Lin, Q., Fu, W.: Wavelet Analysis and Its Application in Denoising the Spectrum of Hyperspectral Image. Spectroscopy and Spectral Analysis 29(7), 1941–1945 (2009)
Hu, B., Li, Q., Smith, A.: Noise reduction of hyperspectral data using singular spectral analysis. International Journal of Remote Sensing 30(9), 1954–1957 (2009)
Jin, L., Wan, W., Wu, Y., Cui, B., Yu, X.: A General Framework for High-Dimensional Data Reduction Using Unsupervised Bayesian Model. CCIS, vol. 98(2), pp. 96–101 (2010)
Sun, L., Gu, D.-F., Luo, J.-S.: Hyperspectral Imagery Denoising Method Based on Wavelets. Spectroscopy and Spectral Analysis 29(7), 1954–1957 (2009)
Chen, G., Qian, S.: Simultaneous dimensionality reduction and denoising of hyperspectral imagery using bivariate wavelet shrinking and principal component analysis. Can. J. Remote Sensing 34(5), 447–454 (2008)
Gómez-Chova, L., Alonso, L., Guanter, L., Camps-Valls, G., Calpe, J., Moreno, J.: Correction of systematic spatial noise in push-broom hyperspectral sensors: application to CHRIS/PROBA images. Applied Optics 47(28), 46–60 (2008)
Minh, N.Q.: Image smoothing of multispectral imagery based on the HNN and geo-statistics. Journal of Remote Sensing 15(3), 640–644 (2011)
Schmidt, K.S., Skidmore, A.K.: Smoothing vegetation spectra with wavelets. International Journal of Remote Sensing 25(6), 1167–1184 (2004)
Atkinson, I., Kamalabadi, F., Jones, D.L.: Wavelet-based hyperspectral image estimation. In: Proceedings of International Geoscience and Remote Sensing Symposium, vol. 2, pp. 743–745 (2003)
Jolliffe, T.: Principal component analysis. Springer, New York (2002)
Chang, W., Guo, L., Liu, K., Fu, C.: A noise removal method for hyperspectral data based on Contourlet transformation and PCA analysis. Journal of Electronics & Information Technology 31(12), 2892–2896 (2009)
Fukunaga, K.: Introduction to statistical pattern recognition. Academic Press, San Diego (1990)
Othman, H., Qian, S.-E.: Noise reduction of hyperspectral imagery using hybrid spatial-spectral derivative-domain wavelet shrinkage. IEEE Transactions on Geosciences and Remote Sensing 44, 397–408 (2006)
Huang, M., Wang, K., Shi, Z., Gong, J., Li, H., Chen, J.: Quantitative Evaluation of Soil Hyperspectra Denoising with Different Filters. Spectroscopy and Spectral Analysis 29(3), 722–725 (2009)
Author information
Authors and Affiliations
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2012 IFIP International Federation for Information Processing
About this paper
Cite this paper
Yang, H. et al. (2012). Application and Evaluation of Wavelet-Based Denoising Method in Hyperspectral Imagery Data. In: Li, D., Chen, Y. (eds) Computer and Computing Technologies in Agriculture V. CCTA 2011. IFIP Advances in Information and Communication Technology, vol 369. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-642-27278-3_47
Download citation
DOI: https://doi.org/10.1007/978-3-642-27278-3_47
Publisher Name: Springer, Berlin, Heidelberg
Print ISBN: 978-3-642-27277-6
Online ISBN: 978-3-642-27278-3
eBook Packages: Computer ScienceComputer Science (R0)