论文标题
深刻注意的人重新识别的人学习功能学习
Deep Attention Aware Feature Learning for Person Re-Identification
论文作者
论文摘要
事实证明,视觉关注可以有效地提高人的重新识别。大多数现有方法通过学习额外的注意力图来重新权重以重新识别的特征图来启发视觉关注。但是,这种方法不可避免地会增加模型的复杂性和推理时间。在本文中,我们建议将注意力学习作为REID网络中的其他目标,而不改变原始结构,从而保持相同的推理时间和模型大小。已经考虑了两种专注,以使学习的特征地图分别意识到人和相关的身体部位。在全球范围内,一个整体关注分支(HAB)使骨架专注于人获得的特征图,以减轻背景的影响。在局部,部分注意力分支(PAB)使提取的特征被分成几组,并分别负责不同的身体部位(即关键点),从而增加了对姿势变异和部分遮挡的鲁棒性。这两种专注是通用的,可以将其纳入现有的REID网络中。我们已经在两个典型网络(Trinet和Trick袋)上测试了其性能,并观察到五个广泛使用的数据集的性能改善。
Visual attention has proven to be effective in improving the performance of person re-identification. Most existing methods apply visual attention heuristically by learning an additional attention map to re-weight the feature maps for person re-identification. However, this kind of methods inevitably increase the model complexity and inference time. In this paper, we propose to incorporate the attention learning as additional objectives in a person ReID network without changing the original structure, thus maintain the same inference time and model size. Two kinds of attentions have been considered to make the learned feature maps being aware of the person and related body parts respectively. Globally, a holistic attention branch (HAB) makes the feature maps obtained by backbone focus on persons so as to alleviate the influence of background. Locally, a partial attention branch (PAB) makes the extracted features be decoupled into several groups and be separately responsible for different body parts (i.e., keypoints), thus increasing the robustness to pose variation and partial occlusion. These two kinds of attentions are universal and can be incorporated into existing ReID networks. We have tested its performance on two typical networks (TriNet and Bag of Tricks) and observed significant performance improvement on five widely used datasets.