Unveiling the Potential of Vision Transformer Architecture for Person Re-identification

N. Perwaiz, M. Shahzad, M. Fraz
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引用次数: 1

Abstract

Person re-identification (Re-ID) is a process to re-identify a person if he has been already seen by a camera network. Since start the convolutional neural networks (CNNs) are dominantly being used to solve the person Re-ID problem. The default limitation of CNNs i.e., local receptive field, prohibits the network to learn the distinctive global dependencies at initial layers. This study proposes a self-attention based deep architecture that learns global dependencies at each network layer to address CNN's limitation. Additionally, the introduction of a novel contextual learning module called Attention Drop Block (ADB) supports learning of less attentive areas of an image as well. The proposed model is evaluated on two public Re-ID benchmarks Market1501 and DukeMTMC-ReID, and outperformed all CNN baseline Re-ID models. The implementation and trained models are made publicly available at https://git.io/JYRE3.
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揭示视觉转换架构对人再识别的潜力
人员再识别(Re-ID)是一个过程,重新识别一个人,如果他已经被一个摄像头网络看到。自开始以来,卷积神经网络(cnn)主要用于解决人的身份识别问题。cnn的默认限制,即局部接受域,禁止网络在初始层学习独特的全局依赖关系。本研究提出了一种基于自关注的深度架构,该架构在每个网络层学习全局依赖关系,以解决CNN的局限性。此外,还引入了一种新的上下文学习模块,称为注意力下降块(ADB),它也支持对图像中注意力不那么集中的区域进行学习。该模型在两个公共Re-ID基准市场1501和DukeMTMC-ReID上进行了评估,并优于所有CNN基准Re-ID模型。实现和训练过的模型可以在https://git.io/JYRE3上公开获得。
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