Research on Natural Scene Vehicle Nameplate Text Detection Based on Improved DBNet

Yucheng Du, Jinsong Dong
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Abstract

Vehicle nameplate information as the main content of vehicle test, it is an important guarantee for the test quality of automobile testing institutions, and an important basis for the transportation authorities to determine the consistency of vehicle parameter configuration. Aiming at the problems of diverse text distribution, variable scale and complex background in vehicle nameplate detection, this paper proposes a dense connection and feature enhancement based on differentiable Binarization (DBNet) semantic segmentation algorithm. This algorithm uses the Dense Atrous Spatial Pyramid Pooling (DASPP) module to establish the connection between multiple dilated convolutions, capture dense sampling point pixels, and improve the utilization of high-level feature information. Secondly, the Feature Pyramid Enhancement Module (FPEM) is used to enhance the expression ability of the multi-layer feature information output from the backbone network, and the Feature Fusion Module (FFM) is used to fuse the feature information of different scales output from the FPEM, which improves the complementary ability between the features of each layer and obtains more comprehensive feature map information. Finally, the output of the DASPP and the FFM are concatenated to get the final segmentation results. The experimental results show that the improved algorithm can effectively locate the nameplate text area in the complex background. The detection accuracy on the self-defined datasets reaches 90.4 %, which is 2.6 % higher than the original algorithm DBNet.
基于改进DBNet的自然场景车辆铭牌文本检测研究
车辆铭牌信息作为车辆检测的主要内容,是汽车检测机构检测质量的重要保证,也是交通主管部门确定车辆参数配置一致性的重要依据。针对汽车铭牌检测中文本分布多样、尺度多变、背景复杂等问题,提出了一种基于可微二值化(DBNet)的密集连接和特征增强语义分割算法。该算法利用DASPP (Dense Atrous Spatial Pyramid Pooling)模块建立多个扩展卷积之间的连接,捕获密集采样点像素,提高高级特征信息的利用率。其次,利用特征金字塔增强模块(Feature Pyramid Enhancement Module, FPEM)增强骨干网输出的多层特征信息的表达能力,利用特征融合模块(Feature Fusion Module, FFM)对FPEM输出的不同尺度的特征信息进行融合,提高了各层特征之间的互补能力,获得更全面的特征图信息。最后,将DASPP和FFM的输出连接起来,得到最终的分割结果。实验结果表明,改进后的算法能在复杂背景下有效定位铭牌文本区域。在自定义数据集上的检测准确率达到90.4%,比原算法DBNet提高了2.6个百分点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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