Many of the existing Person Re-identification (Re-ID) approaches depend on feature maps which are either partitioned to localize parts of a person or reduced to create a global representation. While part localization has shown significant success, it uses either na{\i}ve position-based partitions or static feature templates. These, however, hypothesize the pre-existence of the parts in a given image or their positions, ignoring the input image-specific information which limits their usability in challenging scenarios such as Re-ID with partial occlusions and partial probe images. In this paper, we introduce a spatial attention-based Dynamic Part Template Initialization module that dynamically generates part-templates using mid-level semantic features at the earlier layers of the backbone. Following a self-attention layer, human part-level features of the backbone are used to extract the templates of diverse human body parts using a simplified cross-attention scheme which will then be used to identify and collate representations of various human parts from semantically rich features, increasing the discriminative ability of the entire model. We further explore adaptive weighting of part descriptors to quantify the absence or occlusion of local attributes and suppress the contribution of the corresponding part descriptors to the matching criteria. Extensive experiments on holistic, occluded, and partial Re-ID task benchmarks demonstrate that our proposed architecture is able to achieve competitive performance. Codes will be included in the supplementary material and will be made publicly available.
翻译:现有的许多个人再确认(Re-ID)方法取决于地貌图,这些地貌图或被分割成一个人的部位,或被缩减成一个全球代表制。虽然部分本地化显示相当成功,但使用基于位置的中层分隔或静态地貌模板。然而,这些地方化方法对某一图像或其位置中各部分的预存在状态进行假设,忽视了输入的图像特定信息,从而限制了其在具有挑战性的情景中的可用性,如用部分封闭和部分探测图像进行再识别和校正。在本文中,我们引入一个基于空间的注意的动态部分模板初始化模块,该模块利用骨干早期的中级语义特征动态地生成部分板件。在自我注意层之后,骨干的人部分的分级特征被用来利用简化的跨部位计划提取各部分的模板,然后用于识别和校正来自精度丰富特征的各种人类部分的描述,提高整个模型的辨别能力。我们进一步探索部分基于部分的权重权重权重权重,从而量化缺失或压缩整个结构的缺失。