A Network Combining Local Features and Attention Mechanisms for Vehicle Re-Identification

Linghui Li, Xiaohui Zhang, Yan Xu
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引用次数: 2

Abstract

Vehicle of the same manufacturer and the same color can only be distinguished by their subtle difference. If these small features, such as stickers on windows and spray paint on cars, can be better used, we can significantly improve the accuracy of vehicle reidentification. This paper aims to develop an effective network combining local features and attention mechanisms for vehicle reidentification. It divides the feature map to enable the network to capture more detailed feature information. At the same time, it uses the attention mechanism to enable the network to focus on the most important part of each branch, effectively eliminating background and other interference, and improving the network performance. Experiments show that this method improves the result of Rank-1 and mAP on two public datasets: VeRi-776 and VRIC.
结合局部特征和注意机制的车辆再识别网络
同一厂家、同一颜色的车辆,只能通过细微的差别来区分。如果能更好地利用车窗贴、汽车喷漆等这些小功能,我们就能显著提高车辆再识别的准确性。本文旨在开发一种结合局部特征和注意机制的有效的车辆再识别网络。它对特征映射进行划分,使网络能够捕获更详细的特征信息。同时利用注意力机制,使网络集中在各分支最重要的部分,有效消除背景等干扰,提高网络性能。实验表明,该方法在VeRi-776和VRIC两个公共数据集上改进了Rank-1和mAP的结果。
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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