Lightweight Pepper Disease Detection Based on Improved YOLOv8n

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Abstract

China is the world's largest producer of chili peppers, which occupy particularly important economic and social values in various fields such as medicine, food and industry.However, during its production process, chili peppers are affected by pests and diseases resulting in significant yield reduction due to temperature, environment and other reasons. In this study, a lightweight pepper disease identification method DD-YOLO based on the YOLOv8n model is proposed. First, the deformable convolutional module DCNv2 (Deformable Convolutional Networks) and the inverted residual mobile block iRMB (Inverted Residual Mobile Block) are introduced into the C2Fmodule to improve the accuracy of the sampling range and reduce the computational amount; secondly, the DySample sampling operator (Dynamic Sample) is integrated into the head network toreduce the amount of data and reduce the complexity of computation. Finally, we use Large Separable Kernel Attention (LSKA) to improve the SPPF module (Spatial Pyramid Pooling Fast) to enhance the performance of multi-scale feature fusion. The experimental results show that the accuracy, recall and average precision of the DD-YOLO model are 91.6%, 88.9% and 94.4%, respectively, compared with the base network YOLOv8n, it improves 6.2, 2.3 and 2.8 percentage points respectively, the model weight is reduced by 22.6%, and the number of floating-point operations per second is improved by 11.1%. This method provides a technical basis for intensive cultivation and management of chili peppers as well as efficiently and cost-effectively accomplishes the task of identifying chili pepper pests and diseases.

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