OMC-YOLO:一种轻量级的杏鲍菇分级检测方法

Lei Shi, Zhanchen Wei, Haohai You, Jiali Wang, Zhuo Bai, Helong Yu, Ruiqing Ji, Chunguang Bi
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摘要

本文提出了一种基于 YOLOv8n 改进的轻量级模型--OMC-YOLO,用于杏鲍菇的自动检测和分级。针对传统杏鲍菇种植过程中人工操作效率低、成本高、质量难以保证等问题,在 YOLOv8n 模型的基础上对 OMC-YOLO 进行了改进。具体而言,该模型在骨干网络中引入了深度可分离卷积(DWConv),在颈部部分集成了大分离卷积核关注机制(LSKA)和瘦颈结构,并采用 DIoU 损失函数进行优化。实验结果表明,在杏鲍菇数据集上,OMC-YOLO模型与Faster R-CNN、SSD、YOLOv3-tiny、YOLOv5n、YOLOv6、YOLOv7-tiny、YOLOv8n、YOLOv9-gelan、YOLOv10n等主流目标检测模型相比,具有更高的检测效果,mAP50值达到94.95%,提高了2.62%。参数数量和计算量也减少了 26%。该模型为杏鲍菇等级自动检测提供了技术支撑,有助于实现质量控制,降低人工成本,对智慧农业建设具有积极意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
OMC-YOLO: A Lightweight Grading Detection Method for Oyster Mushrooms
In this paper, a lightweight model—OMC-YOLO, improved based on YOLOv8n—is proposed for the automated detection and grading of oyster mushrooms. Aiming at the problems of low efficiency, high costs, and the difficult quality assurance of manual operations in traditional oyster mushroom cultivation, OMC-YOLO was improved based on the YOLOv8n model. Specifically, the model introduces deeply separable convolution (DWConv) into the backbone network, integrates the large separated convolution kernel attention mechanism (LSKA) and Slim-Neck structure into the Neck part, and adopts the DIoU loss function for optimization. The experimental results show that on the oyster mushroom dataset, the OMC-YOLO model had a higher detection effect compared to mainstream target detection models such as Faster R-CNN, SSD, YOLOv3-tiny, YOLOv5n, YOLOv6, YOLOv7-tiny, YOLOv8n, YOLOv9-gelan, YOLOv10n, etc., and that the mAP50 value reached 94.95%, which is an improvement of 2.62%. The number of parameters and the computational amount were also reduced by 26%. The model provides technical support for the automatic detection of oyster mushroom grades, which helps in realizing quality control and reducing labor costs and has positive significance for the construction of smart agriculture.
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