A Comparative Analysis of Machine Learning Algorithms for Detection of Organic and Nonorganic Cotton Diseases
Author(s) -
Sandeep Kumar,
Arpit Jain,
Anand Prakash Shukla,
Satyendr Singh,
Rohit Raja,
Shilpa Rani,
G Harshitha,
Mohammed A. AlZain,
Mehedi Masud
Publication year - 2021
Publication title -
mathematical problems in engineering
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.262
H-Index - 62
eISSN - 1026-7077
pISSN - 1024-123X
DOI - 10.1155/2021/1790171
Subject(s) - monoculture , crop , crop productivity , agriculture , productivity , agronomy , mathematics , microbiology and biotechnology , algorithm , machine learning , agricultural engineering , biology , computer science , engineering , ecology , economics , macroeconomics
Cotton is the natural fiber produced, and the commercial crop grown in monoculture on 2.5% of total agricultural land. Cotton is a drought-resistant crop that provides a reliable income to the farmers that grow under the area with a threat from climatic change. These cotton crops are being affected by bacterial, fungal, viral, and other parasitic diseases that may vary due to the climatic conditions resulting in the crop’s low productivity. The most prone to diseases is the leaf that results in the damage of the plant and sometimes the whole crop. Most of the diseases occur only on leaf parts of the cotton plant. The primary purpose of disease detection has always been to identify the diseases affecting the plant in the early stages using traditional techniques for better production. To detect these cotton leaf diseases appropriately, the prior knowledge and utilization of several image processing methods and machine learning techniques are helpful.
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