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Applications of Geospatial Technologies in Plant Health Management

  • P. P. Nageswara Rao
  • B. P. Lakshmikantha
Chapter
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Abstract

In this chapter, an overview of remote sensing applications for pest management and plant protection is presented. The flow and gaps in the existing organization of plant protection information are highlighted. Methods of integration of remotely sensed data into the conventional plant protection and crop assessment system are addressed. Crop pests and diseases commonly occurring in continuous cropping pattern zones, whose symptoms are amenable to remote sensing, are dealt with. Numerous economically important crop pests/diseases are sporadic in time and space, but they are not included in this chapter. The objective of this chapter is to create basic awareness for the possibility of using remotely sensed data for pest detection and plant protection. This will also enthuse further thinking to make this emerging area of application operational in the years to come.

Keywords

Remote sensing Plant protection Plant health management Integrated pest management 

Notes

Acknowledgement

The authors are thankful to Director, KSRSAC for his interest and encouragement in pursuing this new field of space application. The authors gratefully acknowledge the work done by several authors whose references are mentioned in the literature cited here. Thanks are due to the support staff at KSRSAC for their secretarial support.

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Copyright information

© Springer Nature Singapore Pte Ltd. 2020

Authors and Affiliations

  • P. P. Nageswara Rao
    • 1
  • B. P. Lakshmikantha
    • 1
  1. 1.Karnataka State Remote Sensing Application Centre (KSRSAC)BengaluruIndia

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