Spectral data driven machine learning classification models for real time leaf spot disease detection in brinjal crops

This study presents the development and evaluation of machine learning models for detecting leaf spot disease in brinjal crops using spectral sensor data. The spectral reflectance of diseased and healthy tissues was recorded across nine wavelength bands (F1: 415 nm, F2: 445 nm, F3: 480 nm, F4: 515 n...

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Veröffentlicht in:European journal of agronomy 2024-11, Vol.161, p.127384, Article 127384
Hauptverfasser: Anand, Rohit, Parray, Roaf Ahmad, Mani, Indra, Khura, Tapan Kumar, Kushwaha, Harilal, Sharma, Brij Bihari, Sarkar, Susheel, Godara, Samarth
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Sprache:eng
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Zusammenfassung:This study presents the development and evaluation of machine learning models for detecting leaf spot disease in brinjal crops using spectral sensor data. The spectral reflectance of diseased and healthy tissues was recorded across nine wavelength bands (F1: 415 nm, F2: 445 nm, F3: 480 nm, F4: 515 nm, F5: 555 nm, F6: 590 nm, F7: 630 nm, F8: 680 nm, and F9: NIR-750 nm). The data revealed distinct spectral signatures, particularly between F5 (555 nm) and F9 (NIR), where diseased tissues consistently showed lower reflectance compared to healthy tissues. Two machine learning algorithms, Decision Tree (DT) and Support Vector Machine (SVM), were employed to classify the spectral data. The DT model achieved a maximum testing accuracy of 88.2 %, with a Gini index and a depth of 4 as optimal hyperparameters. The confusion matrix indicated that the DT model correctly identified 883 diseased instances and 667 healthy cases, while misclassifying 213 healthy tissues as diseased and 25 diseased tissues as healthy. The SVM model, configured with a cost parameter of 10.0 and a tolerance of 0.01, outperformed the DT model, achieving a testing accuracy of 92.4 %. The SVM model correctly classified 99.3 % of diseased instances and 94.1 % of healthy cases. The results demonstrate the potential of spectral sensor data combined with ML algorithms for precise disease detection, facilitating targeted pesticide application, and reducing input costs. The high accuracy of the SVM model underscores its utility in agricultural disease management, enabling early intervention and enhancing crop health monitoring. Future research may explore integrating multiple sensors and advanced feature extraction methods to further improve the efficiency and accuracy of these systems. [Display omitted] •Sustainable approach for real-time disease detection to reduce pesticide use.•Brinjal disease management via spectral response monitoring in Visible and NIR regions.•Machine learning leverages spectral data for brinjal leaf spot disease detection.•Decision tree model achieved 88.2 % accuracy with Gini index depth of 4.•SVM model outperformed with 92.4 % accuracy in detecting brinjal leaf spot disease.
ISSN:1161-0301
DOI:10.1016/j.eja.2024.127384