YOLOT: Multi-scale and diverse tire sidewall text region detection based on You-Only-Look-Once(YOLOv5)

Dehua Liu , Yongqin Tian , Yibo Xu , Wenyi Zhao , Xipeng Pan , Xu Ji , Mu Yang , Huihua Yang
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Abstract

Driving safety is significant to building a people-oriented and harmonious society, Tires are one of the key components of a vehicle and the character information on the tire sidewall is critical to their storage and usage. However, due to the diverse and differentiated features of typographic fonts, simultaneously extracting comprehensive characteristics is an extremely challenging task. To effectively break through these performance degradation issues, a multi-scale tire sidewall text region detection algorithm based on YOLOv5 is introduced, called YOLOT, which fuses comprehensive feature information in both width and depth directions. In this study, we firstly propose the Width and Depth Awareness (WDA) module in the text region detection field and successfully integrated it with the FPN structure to form the WDA-FPN. The purpose of WDA-FPN is to empower the network to capture multi-scale and multi-shape features in images, thereby augmenting the algorithm’s abstraction and representation of image features and concurrently boosting its robustness and generalization performance. Experimental findings indicate that, compared to the primary algorithm, YOLOT achieves significant improvement in accuracy, providing a higher detection reliability. The dataset and code for the paper are available at: https://github.com/Cloude-dehua/YOLOT.

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YOLOT:基于 "只看一次"(YOLOv5)的多尺度、多样化轮胎侧壁文字区域检测
行车安全对于建设以人为本的和谐社会意义重大。轮胎是汽车的关键部件之一,轮胎侧壁上的文字信息对于轮胎的储存和使用至关重要。然而,由于排版字体的多样性和差异化特征,同时提取综合特征是一项极具挑战性的任务。为了有效突破这些性能下降的问题,我们提出了一种基于 YOLOv5 的多尺度轮胎侧壁文字区域检测算法,称为 YOLOT,它融合了宽度和深度两个方向的综合特征信息。在本研究中,我们首先在文本区域检测领域提出了宽度和深度感知(WDA)模块,并成功地将其与 FPN 结构集成,形成了 WDA-FPN 结构。WDA-FPN 的目的是使网络能够捕捉图像中的多尺度和多形状特征,从而增强算法对图像特征的抽象和表示能力,同时提高算法的鲁棒性和泛化性能。实验结果表明,与主要算法相比,YOLOT 的准确性有了显著提高,提供了更高的检测可靠性。本文的数据集和代码可在以下网址获取:https://github.com/Cloude-dehua/YOLOT。
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