Improving Pedestrian Attribute Recognition with Dual Adaptive Fusion Attention

Wenbiao Xie, Chen Zou, Chengui Fu, Xiaomei Xie, Qiuming Liu, He Xiao
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Abstract

As one of the important fields of computer vision research, pedestrian attribute recognition has received increasing attention on researchers at domestic and foreign. However, obtaining long-distance pedestrian information on actual scenes has problems, such as lack of information, incomplete feature extraction, and low attribute recognition accuracy. To address these issues, we proposed a Dual Adaptive Fusion Attention and Criss-Cross Attention Module (DAFCC). This module contains two sub-modules: First, the dual adaptive fusion attention module automatically adjusts the weights of attributes in different scales, then fusion the different scale features and makes attribute extraction more complete. Second, we employ criss-cross attention to extract rich contextual information, which is beneficial for visual understanding. By training on the public PA-100K, RAP and PETA datasets, the mean accuracies achieved 81.09%, 81.44% and 85.94%, respectively. Extensive experimental results show that the method has strong competitiveness among many current classical algorithms.
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双自适应融合注意改进行人属性识别
行人属性识别作为计算机视觉研究的重要领域之一,越来越受到国内外研究者的关注。然而,在实际场景中获取远距离行人信息存在信息缺乏、特征提取不完整、属性识别精度低等问题。为了解决这些问题,我们提出了双自适应融合注意和交叉注意模块(DAFCC)。该模块包含两个子模块:一是双自适应融合关注模块,自动调整不同尺度下属性的权重,融合不同尺度特征,使属性提取更加完整;其次,我们利用交叉注意力提取丰富的上下文信息,这有利于视觉理解。在PA-100K、RAP和PETA公开数据集上进行训练,平均准确率分别达到81.09%、81.44%和85.94%。大量的实验结果表明,该方法与现有的许多经典算法相比具有很强的竞争力。
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