Abstract

Qualitative and quantitative agricultural production leads to economic benefits which can be achieved by periodic monitoring of crop, detection and prevention of crop diseases and insects. Quality of crop production is reduced by pest infection and crop diseases. Existing measures involves manual detection of cotton diseases by farmers and experts which requires regular monitoring and detection manifest at middle to later stage of infection which causes many disadvantages such as becoming too late for diseases to be cured. Lack of early detection of diseases causes the diseases to be spread in nearby crops in the field and also spraying of pesticides is done on entire field for minimizing the infection of disease. The main goal of proposed research topic is to find the solution to the agriculture problem which involves detecting disease in cotton plant at early stage and classify the disease based on symptoms. Early detection of disease at an early stage prevent it from spreading to another area and preventive measures can be taken by farmers by spraying pesticides to control its growth which helps to increase the cotton yield production. Automatic identification of the different diseases affecting cotton crop will give many benefits to the farmers so that time, money will be saved and also gives healthy life to the crop. The contribution of this paper is to present the machine learning approach used for cotton crop disease diagnosis and classification.

Highlights

  • Agriculture field plays a key role in India

  • Crop diseases cause reduction in agriculture production which is one of the major problem faced by farmers

  • This paper summarized that different machine learning and deep learning algorithms are used for crop disease identification and classification to gain optimum agriculture production

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Summary

INTRODUCTION

Agriculture field plays a key role in India. Crop diseases and Pest control is one of the major problem faced by farmers at nation and at local level. Incorrect detection of disease by expert and farmer can result in incorrect application of pesticides which results in crop production losses for our farmers It causes spraying of pesticides entirely on field on healthy cotton plant for minimizing the infection of disease. This unnecessary use of pesticides causing environmental problems because many other insects and birds can die because of eating such plants. In bacterial disease,during all growth stages of cotton plant all sections such as roots, leaves, bracts, and bollards can be infected with bacteria It causes seedling blight, leaf blot, stem blackarm and petioles, black vein, and rot in the boll. Boll rot, Fusarium Vilt, Verticillium wilt, Grey mildew are some examples of fungal diseases which are shown in figure 7,8 and 9

LITERATURE SURVEY
COMPARISONS OF MACHINE LEARNING TECHNIQUES
Findings
CONCLUSION
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