Rice plant disease classification using color features: a machine learning paradigm

Journal of Plant Pathology - Tập 103 Số 1 - Trang 17-26 - 2021
Vimal K. Shrivastava1, Monoj K. Pradhan2
1School of Electronics Engineering, Kalinga Institute of Industrial Technology (KIIT), Bhubaneswar, India
2Department of Agricultural Statistics and Social Sciences (L), Indira Gandhi Agricultural University, Raipur, India

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