IAB-Net: Informative and Attention Based Person Re-Identification

Rao Faizan, M. Fraz, M. Shahzad
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引用次数: 4

Abstract

This paper proposes Informative Attention Based IAB Network, a advance framework that unifieds multiple attention modules by preserving localized and global contextual information so that the model can learn most informative, representative and discriminative features. Specifically, we have also introduced Channel and Spatial Attention (CASA) Network that consists on a pair of attention modules named as Channel Attention Module and Spatial Attention Module. Channel attention module and spatial attention module primarily focusing on channel aggregation, spatial dimension and position awareness, respectively. In our proposed pipeline, we have used this pair after each convolutional block of ResNet-50, that significantly boost the performance and representation power of network. By using this new lightweight backbone with orthogonality constraint to enforce diversity on both hidden activation and weights and along with attention modules, our experiments on different popular benchmarks i.e Market-1501 and DukeMTMC-reID have achieved state-of-the-art performance and we confirm that our framework manifests harmonious refinement in detection and classification. The code is publicly available at this link https://github.com/faize5/IAB-Net.
基于信息性和注意力的人再识别
该文提出了基于信息性注意的IAB网络框架,该框架通过保留局部和全局上下文信息来统一多个注意模块,从而使模型能够学习到最具信息性、代表性和判别性的特征。具体来说,我们还介绍了通道和空间注意网络(CASA),该网络由一对注意模块组成,即通道注意模块和空间注意模块。通道注意模块和空间注意模块分别主要关注通道聚合、空间维度和位置意识。在我们提出的管道中,我们在ResNet-50的每个卷积块之后使用这对,这显着提高了网络的性能和表示能力。通过使用这种具有正交性约束的新型轻量级骨干来强制隐藏激活和权重的多样性,以及注意力模块,我们在不同的流行基准(即Market-1501和DukeMTMC-reID)上的实验取得了最先进的性能,我们确认我们的框架在检测和分类方面表现出和谐的改进。代码可在此链接https://github.com/faize5/IAB-Net上公开获取。
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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