基于注意机制和局部-全局特征关联网络的车辆再识别

Caiyu Li, X. Du, Yun Wu, Da-han Wang
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引用次数: 0

摘要

车辆再识别(Re-ID)旨在从由多个摄像头捕获的车辆图像组成的大型数据集中检索目标车辆。大多数车辆在低分辨率、遮挡和视点变化的环境下难以被识别,这给车辆Re-ID带来了挑战。现有的工作通常使用附加的属性信息来区分不同的车辆,如颜色、视点和模型。然而,这需要昂贵的手工注释。为此,我们提出了一种基于关注机制和局部-全局特征关联(AM-LGFA)的三分支网络来提高车辆Re-ID的准确性。在全局分支中,提取车辆的全局特征。在注意分支中引入多尺度通道注意模块,抑制无关信息,提取重要通道特征。从主干提取的特征在局部分支的水平方向上被划分为不同的条纹特征。然后将每个条纹特征与全局信息连接起来,增强特征之间的关联性。最后,将从三个分支中提取的特征连接起来作为测试阶段的特征表示。实验结果表明,AM-LGFA网络提取的特征具有互补性。在两个具有挑战性的公共数据集(VehicleID和VeRi-776)上验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining Attention Mechanism and Local-Global Features Association Network for Vehicle Re-identification
Vehicle re-identification (Re-ID) aims to retrieve the target vehicle from a large dataset composed of vehicle images captured by multiple cameras. Most vehicles are difficult to recognize in the environment of low resolution, occlusion, and viewpoint change, which brings challenges to vehicle Re-ID. Existing work usually uses additional attribute information to distinguish different vehicles, such as color, viewpoint, and model. However, this requires expensive manual annotation. Therefore, we propose a three-branch network based on attention mechanism and local-global feature association (AM-LGFA) to improve the accuracy of vehicle Re-ID. In the global branch, the global features of the vehicle are extracted. A multi-scale channel attention module is introduced into the attention branch to suppress irrelevant information and extract important channel features. The features extracted from the backbone are divided into different stripe features in the horizontal direction in the local branch. Then connect each stripe feature with the global information to enhance the context between features. Finally, the features extracted from the three branches are concatenated as the feature representation of the test phase. The experimental results show that the features extracted by the AM-LGFA network are complementary. The effectiveness of this method is verified on two challenging public datasets, VehicleID and VeRi-776.
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