Deep learning system for paddy plant disease detection and classification

被引:0
作者
Amritha Haridasan
Jeena Thomas
Ebin Deni Raj
机构
[1] Indian Institute of Information Technology,Department of Computer Science and Engineering
来源
Environmental Monitoring and Assessment | 2023年 / 195卷
关键词
Computer vision; Machine learning; Deep learning; Convolutional neural network; Support vector machine; Image segmentation;
D O I
暂无
中图分类号
学科分类号
摘要
Automatic detection and analysis of rice crop diseases is widely required in the farming industry, which can be utilized to avoid squandering financial and other resources, reduce yield losses, and improve treatment efficiency, resulting in healthier crop output. An automated approach was proposed for accurately detecting and classifying diseases from a supplied photograph. The proposed system for the recognition of rice plant diseases adopts a computer vision–based approach that employs the techniques of image processing, machine learning, and deep learning, reducing the reliance on conventional methods to protect paddy crops from diseases like bacterial leaf blight, false smut, brown leaf spot, rice blast, and sheath rot, the five primary diseases that frequently plague the Indian rice fields. Following image pre-processing, image segmentation is employed to determine the diseased section of the paddy plant, with the diseases listed above being identified purely on the basis of their visual contents. An integration of a support vector machine classifier and convolutional neural networks are used to recognize and classify specific varieties of paddy plant diseases. With ReLU and softmax functions, the suggested deep learning–based strategy attained the highest validation accuracy of 0.9145. Following recognition, a predictive remedy is recommended, which can assist agriculture-related individuals and organizations in taking suitable measures to combat these diseases.
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  • [1] Ahmed F(2012)Classification of crops and weeds from digital images: A support vector machine approach Crop Protection 40 98-104
  • [2] Al-Mamun HA(2012)Recent advances in sensing plant diseases for precision crop protection European Journal of Plant Pathology 133 197-209
  • [3] Bari AH(2016)Analysis of k-means and k-medoids algorithm for big data Procedia Computer Science 78 507-512
  • [4] Hossain E(2018)Rice leaf blast disease detection using multi-level colour image thresholding Journal of Telecommunication Electronic and Computer Engineering (JTEC) 10 1-6
  • [5] Kwan P(2016)A review on the main challenges in automatic plant disease identification based on visible range images Biosystems Engineering 144 52-60
  • [6] Anne-Katrin Mahlein US(2015)Rice sheath rot: An emerging ubiquitous destructive disease complex Frontiers in Plant Science 6 1066-2281
  • [7] Oerke Erich-Christian(2001)Color image segmentation: Advances and prospects Pattern Recognition 34 2259-1532
  • [8] Dehne H-W(2019)Bacterial leaf blight resistance in rice: A review of conventional breeding to molecular approach Molecular Biology Reports 46 1519-20000
  • [9] Arora P(2020)Systematic literature review of implementations of precision agriculture Computers and Electronics in Agriculture 176 105626-58
  • [10] Varshney S(2018)Study of digital image processing techniques for leaf disease detection and classification Multimedia Tools and Applications 77 19951-1141