Author:
Pratibha Kokardekar ,Aman Shah ,Arjun Thakur ,Prachi Shahu ,Rohan Raggad ,Sudhanshu Keshaowar ,Vineet Pashine
Abstract
Agriculture plays a very important role in strengthening the economy of a country. Disease in plants is the majorcause of production and economy loss which also reduced the quality and quantity of agriculture products. Farmersface a lot of difficulty in detecting the diseases with naked eye which is the traditional and most used way. It isan important and tedious task to detect disease on crops. It requires a lot of skilled labour and huge amount oftime. This paper compares the benefits and limitations of existing techniques for disease detections. Finally, itwill talk about a method for disease detection in plants using convolutional neural network (CNN).
Publisher
Perpetual Innovation Media Pvt. Ltd.
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