Black pepper leaf disease detection using deep learning

Jagadeesha B G, Ramesh Hegde, Ajith Padyana

Abstract

Advances in deep learning techniques have achieved spectacular success in the detection of plant diseases. A new method for detecting black pepper leaf disease using deep learning was proposed. In the proposed scheme, the SqueezeNet model is used, which is a Convolutional Neural Network (CNN), where the CNN is a subset of deep learning networks. The disease detection is based on the visual characteristics of the black pepper leaves. Thus, the proposed method is an image classification scheme using a trained SqueezeNet that detects whether the pepper leaves are healthy or diseased. The detection accuracy is found to be more than 99%. The early detection of defects, such as deformation and discoloration of pepper leaves, forewarns the onset of diseases, and the cultivator of pepper wines can undertake appropriate countermeasures.

Authors

Jagadeesha B G
bgjsmg@gmail.com (Primary Contact)
Ramesh Hegde
Ajith Padyana
B G, J. ., Hegde, R. ., & Padyana, A. (2025). Black pepper leaf disease detection using deep learning. International Journal of Innovative Research and Scientific Studies, 8(2), 897–907. https://doi.org/10.53894/ijirss.v8i2.5389

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