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design-and-implementation-of-a-deep-learning-framework-for-automated-crop-classification-and-health-diagnosis-in-precision-agriculture-–-scientific-reports

Design and implementation of a deep learning framework for automated crop classification and health diagnosis in precision agriculture – Scientific Reports

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