关于改进 YOLOV7-SSWD 数字抄表识别算法的研究。

IF 1.3 4区 工程技术 Q3 INSTRUMENTS & INSTRUMENTATION
Zhenguan Cao, Haixia Yang, Liao Fang, Zhuoqin Li, Jinbiao Li, Gaohui Dong
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引用次数: 0

摘要

抄表识别是机器人完成巡检任务的重要环节。为了解决目前抄表识别算法存在的检测精度低、定位不准确等问题,本文提出了 YOLOV7-SSWD (YOLOV7-SiLU-SimAM-Wise-IoU-DyHeads)模型,这是一种基于多头关注机制的新型检测模型,在 YOLOV7-Tiny 模型的基础上进行了改进。首先,利用 Wise-IoU 损失函数解决样本质量不平衡问题,提高模型的检测精度。其次,使用 SiLU 激活函数构建新的卷积块,并将其应用于 YOLOV7-Tiny 模型,以增强模型的泛化能力。然后,将动态检测头构建为 YOLOV7-Tiny 的头,实现了多尺度特征信息的融合,提高了目标识别性能。最后,我们引入 SimAM 来提高网络的特征提取能力。本文通过消融实验和对比分析充分验证了各组件的重要性。实验结果表明,YOLOV7-SSWD 模型的 mAP 和 F1 分数分别达到了 89.8% 和 0.84。与原始网络相比,mAP 增加了 8.1%,F1 分数增加了 0.1。YOLOV7-SSWD 算法具有更好的定位和识别精度,为部署巡检机器人进行自动巡检提供了参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on improved YOLOV7-SSWD digital meter reading recognition algorithms.

Meter reading recognition is an important link for robots to complete inspection tasks. To solve the problems of low detection accuracy and inaccurate localization of current meter reading recognition algorithms, the YOLOV7-SSWD (YOLOV7-SiLU-SimAM-Wise-IoU-DyHeads) model is proposed, a novel detection model based on the multi-head attention mechanism, which is improved on the YOLOV7-Tiny model. First, the Wise-IoU loss function is used to solve the problem of sample quality imbalance and improve the model's detection accuracy. Second, a new convolutional block is constructed using the SiLU activation function and applied to the YOLOV7-Tiny model to enhance the model's generalization ability. The dynamic detection header is then built as the header of YOLOV7-Tiny, which realizes the fusion of multi-scale feature information and improves the target recognition performance. Finally, we introduce SimAM to improve the feature extraction capability of the network. In this paper, the importance of each component is fully verified by ablation experiments and comparative analysis. The experiments showed that the mAP and F1-scores of the YOLOV7-SSWD model reached 89.8% and 0.84. Compared with the original network, the mAP increased by 8.1% and the F1-scores increased by 0.1. The YOLOV7-SSWD algorithm has better localization and recognition accuracy and provides a reference for deploying inspection robots to perform automatic inspections.

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来源期刊
Review of Scientific Instruments
Review of Scientific Instruments 工程技术-物理:应用
CiteScore
3.00
自引率
12.50%
发文量
758
审稿时长
2.6 months
期刊介绍: Review of Scientific Instruments, is committed to the publication of advances in scientific instruments, apparatuses, and techniques. RSI seeks to meet the needs of engineers and scientists in physics, chemistry, and the life sciences.
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