中国近代银币真伪鉴定的改进YoloV5

Xin Wang, Jiale Ren, Wei Shi, Tao Wang, Xuhui Guo, Yiyuan Han
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引用次数: 0

摘要

银币是近代中国重要的流通货币,银币的边齿是鉴别其真伪的关键因素。然而,一些爱好者很难辨别真伪。因此,我们提出了一种改进的yoloV5神经网络算法,该算法可以通过银币的边牙图像来区分银币的真伪,mAP值大于0.8。本文的算法采用自注意机制,可以充分利用图像像素之间的相关性,充分关注图像中的关键细节,使网络模型在学习少量参数时就能捕捉到图像的全局特征。与yoloV5相比,本文改进的网络模型在公共数据集上表现更好。无论mAP值、FLOPs还是平均处理速度都有了明显的提高。此外,本文还构建了一套银币边牙图像数据集,以方便今后的相关研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved YoloV5 for the Authenticity Identification of Silver Coins in Modern China
Silver coin is an important circulating currency in modern China, and the edge teeth of silver coins are the key factor to identify its authenticity. However it is difficult for some hobbyists to distinguish the authenticity. So we propose an improved yoloV5 neural network algorithm, which can distinguish the authenticity of silver coin through its edge tooth images, and the value of mAP is more than 0.8. The algorithm in this paper adopts the Self-Attention mechanism, which can make full use of the correlation between image pixels and fully focus on the key details in the image, so that the network model can capture the global features of the image when learning a few parameters. Compared with yoloV5, the improved network model in this paper performs better on the public data set. No matter the value of mAP, FLOPs or average processing speed all have improved significantly. In addition, this paper also constructs a set of silver coin edge tooth images data set to facilitate relevant research in the future.
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