YOLOv8-Coal:基于改进型 YOLOv8 的煤岩图像识别方法

IF 3.5 4区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Wenyu Wang, Yanqin Zhao, Zhi Xue
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引用次数: 0

摘要

针对煤岩图像识别中由于光线不足、图像失焦和工人遮挡等原因造成的误检和漏检问题,在 YOLOv8 的基础上引入了一种名为 YOLOv8-Coal 的新方法,以提高识别精度和处理速度。可变形卷积网络第 3 版通过偏移调整采样位置并使其与物体形状紧密对齐,增强了物体特征提取功能。特征融合网络中的极化自我关注模块强调关键特征,抑制不必要的信息,从而将无关因素降至最低。此外,轻量级 C2fGhost 模块结合了 GhostNet 和 C2f 模块的优势,进一步降低了模型参数和计算负荷。实证研究结果表明,YOLOv8-Coal 在煤岩图像数据集的所有指标上都取得了大幅提升。更确切地说,AP50、AP50:95 和 AR50:95 的值分别提高到 77.7%、62.8% 和 75.0%。此外,最佳定位召回精度(oLRP)降低到 45.6%。此外,模型参数减少到 2.59M,FLOPs 减少到 6.9G。最后,模型权重文件的大小仅为 5.2 MB。与其他常用算法相比,增强算法的优势得到了进一步体现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
YOLOv8-Coal: a coal-rock image recognition method based on improved YOLOv8
To address issues such as misdetection and omission due to low light, image defocus, and worker occlusion in coal-rock image recognition, a new method called YOLOv8-Coal, based on YOLOv8, is introduced to enhance recognition accuracy and processing speed. The Deformable Convolution Network version 3 enhances object feature extraction by adjusting sampling positions with offsets and aligning them closely with the object’s shape. The Polarized Self-Attention module in the feature fusion network emphasizes crucial features and suppresses unnecessary information to minimize irrelevant factors. Additionally, the lightweight C2fGhost module combines the strengths of GhostNet and the C2f module, further decreasing model parameters and computational load. The empirical findings indicate that YOLOv8-Coal has achieved substantial enhancements in all metrics on the coal rock image dataset. More precisely, the values for AP50, AP50:95, and AR50:95 were improved to 77.7%, 62.8%, and 75.0% respectively. In addition, optimal localization recall precision (oLRP) were decreased to 45.6%. In addition, the model parameters were decreased to 2.59M and the FLOPs were reduced to 6.9G. Finally, the size of the model weight file is a mere 5.2 MB. The enhanced algorithm’s advantage is further demonstrated when compared to other commonly used algorithms.
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来源期刊
PeerJ Computer Science
PeerJ Computer Science Computer Science-General Computer Science
CiteScore
6.10
自引率
5.30%
发文量
332
审稿时长
10 weeks
期刊介绍: PeerJ Computer Science is the new open access journal covering all subject areas in computer science, with the backing of a prestigious advisory board and more than 300 academic editors.
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