Mask Multi-Head Attention with Partition Network for Vehicle Re-Identification

Yang Liu, Chen Kong, Yue-Ji Li, P. Zhang, Han Yu
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引用次数: 0

Abstract

Vehicle Re-identification aims to match a specific vehicle image across different places or cameras based on the similarity among vehicles. vehicle re-id remains confronted with two severe challenges, small inter-class variability caused by a similar vehicle with a similar type and color, and dramatic intra-class variability caused by the variation of view. More recently, methods are proposed to improve performance by using additional metadata such as critical points and orientation, which all require expensive annotations. Therefore, we introduce attention mechanism to solve these two problems without considering extra annotation. In this paper, we propose a novel mask multi-head attention with partition network (MMAPN). To discover subtle differences between two similar vehicles, we propose a partition unit to discover more local detail. To extract features that are robust to both tremendous intra-class differences and subtle inter-class variability, we propose a mask multi-head attention block to extract potential features. Extensive experimental evaluations show our approach achieved state-of-the-art performance.
基于分区网络的车辆再识别方法
车辆再识别的目的是基于车辆之间的相似性,在不同的地点或不同的相机上匹配特定的车辆图像。车辆重新识别仍然面临着两个严峻的挑战,一是由于具有相似型号和颜色的类似车辆造成的小的类间变异性,二是由于视角的变化造成的大的类内变异性。最近,人们提出了一些方法,通过使用额外的元数据(如临界点和方向)来提高性能,这些元数据都需要昂贵的注释。因此,我们引入了注意机制来解决这两个问题,而不考虑额外的注释。本文提出了一种新的基于分割网络的掩模多头注意力(MMAPN)算法。为了发现两个相似车辆之间的细微差异,我们提出了一个分区单元来发现更多的局部细节。为了提取对巨大的类内差异和微妙的类间差异都具有鲁棒性的特征,我们提出了一个面具多头注意块来提取潜在特征。广泛的实验评估表明,我们的方法达到了最先进的性能。
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