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Anthracnose Disease Detection in Cashew Leaf Using Machine Learning Technique Based on Contour Detection and Principal Component Analysis

    Authors

    • Sudha P 1
    • Kumaran P 2

    1 Research Scholar, Department of Computer Science and Engineering, National Institute of Technology Puducherry, India

    2 Assistant Professor, Department of Computer Science and Engineering, National Institute of Technology Puducherry, India

,

Document Type : Research Article

10.47392/irjash.2023.S070
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Abstract

Detecting and classifying leaf diseases in cashew crops is critical for farm- ers to find pest and disease infections. Cashew leaf diseases can reduce pro- ductivity if not detected early. Creating an automated method utilizing image processing for leaf disease identification decreases time and expense and pri- marily contributes to a rise in cashew nut yield. For image segmentation, canny edge detection and an active contour model are utilized. A feature extraction method, Principal Component Analysis (PCA), is applied when the contour has been applied. After the features have been extracted, they are submitted for categorization. This study analyzed several classifiers’ accuracy, preci- sion, and recall values. These classifiers included Random Forest, SVM, KNN, and Naive Bayes. This research tries to answer whether a machine learning classifier provides the best results when the diseased area is divided using the canny edge detection and contour detection technique.

Keywords

  • Cashew Leaf
  • PCA
  • Contour Detection
  • Machine Learning Tech- nique
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International Research Journal on Advanced Science Hub
Volume 5, Issue 05S - Issue Serial Number 5
May 2023
Page 520-525
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  • PDF 2.25 M
History
  • Receive Date: 28 February 2023
  • Revise Date: 14 March 2023
  • Accept Date: 21 March 2023
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  • Article View: 180
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APA

P, S. and P, K. (2023). Anthracnose Disease Detection in Cashew Leaf Using Machine Learning Technique Based on Contour Detection and Principal Component Analysis. International Research Journal on Advanced Science Hub, 5(Issue 05S), 520-525. doi: 10.47392/irjash.2023.S070

MLA

P, S. , and P, K. . "Anthracnose Disease Detection in Cashew Leaf Using Machine Learning Technique Based on Contour Detection and Principal Component Analysis", International Research Journal on Advanced Science Hub, 5, Issue 05S, 2023, 520-525. doi: 10.47392/irjash.2023.S070

HARVARD

P, S., P, K. (2023). 'Anthracnose Disease Detection in Cashew Leaf Using Machine Learning Technique Based on Contour Detection and Principal Component Analysis', International Research Journal on Advanced Science Hub, 5(Issue 05S), pp. 520-525. doi: 10.47392/irjash.2023.S070

CHICAGO

S. P and K. P, "Anthracnose Disease Detection in Cashew Leaf Using Machine Learning Technique Based on Contour Detection and Principal Component Analysis," International Research Journal on Advanced Science Hub, 5 Issue 05S (2023): 520-525, doi: 10.47392/irjash.2023.S070

VANCOUVER

P, S., P, K. Anthracnose Disease Detection in Cashew Leaf Using Machine Learning Technique Based on Contour Detection and Principal Component Analysis. International Research Journal on Advanced Science Hub, 2023; 5(Issue 05S): 520-525. doi: 10.47392/irjash.2023.S070

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