Existing part-aware person re-identification methods typically employ two separate steps: namely, body part detection and part-level feature extraction. However, part detection introduces an additional computational cost and is inherently challenging for low-quality images. Accordingly, in this work, we propose a simple framework named Batch Coherence-Driven Network (BCD-Net) that bypasses body part detection during both the training and testing phases while still learning semantically aligned part features. Our key observation is that the statistics in a batch of images are stable, and therefore that batch-level constraints are robust. First, we introduce a batch coherence-guided channel attention (BCCA) module that highlights the relevant channels for each respective part from the output of a deep backbone model. We investigate channelpart correspondence using a batch of training images, then impose a novel batch-level supervision signal that helps BCCA to identify part-relevant channels. Second, the mean position of a body part is robust and consequently coherent between batches throughout the training process. Accordingly, we introduce a pair of regularization terms based on the semantic consistency between batches. The first term regularizes the high responses of BCD-Net for each part on one batch in order to constrain it within a predefined area, while the second encourages the aggregate of BCD-Nets responses for all parts covering the entire human body. The above constraints guide BCD-Net to learn diverse, complementary, and semantically aligned part-level features. Extensive experimental results demonstrate that BCDNet consistently achieves state-of-the-art performance on four large-scale ReID benchmarks.
翻译:现有部分人再识别方法通常采用两个不同的步骤:即身体部分检测和部分特征提取。然而,部分检测引入了额外的计算成本,对低质量图像具有内在挑战性。因此,在这项工作中,我们提议了一个简单的框架,名为Batch Conflicil-Driven 网络(BCD-Net),在培训和测试阶段绕过身体部分检测,同时仍然学习语义一致的部分特征。我们的主要观察是,一组图像中的统计数据是稳定的,因此批量级限制是强有力的。首先,我们引入了批量一致性引导频道关注模块(BCAC),该模块从深骨干模型的产出中突出每个部分的相关渠道。我们利用一批培训图像对频道部分通信部分通信部分进行调查,然后设置一个新的批量监督信号,帮助BCAC在培训和测试阶段中绕过部分检测部分,然后在整个培训过程中学习分批量,因此我们引入了一组标准化术语,根据分批量CD调调调调调标准。第一期,对BCD-Net的每个部分进行高额补充性反应,同时在BC-C-C的每个分级测试阶段学习所有部分。