DEVELOPMENT OF METHODOLOGY FOR PLANT DISEASE IDENTIFICATION USING IMAGE PROCESSING

Jemy Jose, Dr Satyveer Singh

Volume 2, Issue 1 2018

Page: 21-24

Abstract

In the modern era of research, agriculture is playing an important role in environmental sustainability, growth, and live hood. Chemistry, biology, and physics are being executed in modern technological ways and are supporting interdisciplinary research like biotechnology, bioinformatics, etc. Modern research is leading with artificial intelligence and virtual reality developments. The proposed research is based on the need to improve crop yield with more quality products. Hence, plant diseases need to be identified.

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