High performance person Re-Identification (Re-ID) requires the model to focus on both global silhouette and local details of pedestrian. To extract such more representative features, an effective way is to exploit deep models with multiple branches. However, most multi-branch based methods implemented by duplication of part backbone structure normally lead to severe increase of computational cost. In this paper, we propose a lightweight Feature Pyramid Branch (FPB) to extract features from different layers of networks and aggregate them in a bidirectional pyramid structure. Cooperated by attention modules and our proposed cross orthogonality regularization, FPB significantly prompts the performance of backbone network by only introducing less than 1.5M extra parameters. Extensive experimental results on standard benchmark datasets demonstrate that our proposed FPB based model outperforms state-of-the-art methods with obvious margin as well as much less model complexity. FPB borrows the idea of the Feature Pyramid Network (FPN) from prevailing object detection methods. To our best knowledge, it is the first successful application of similar structure in person Re-ID tasks, which empirically proves that pyramid network as affiliated branch could be a potential structure in related feature embedding models. The source code is publicly available at https://github.com/anocodetest1/FPB.git.
翻译:高性能人重新识别(Re-ID)要求该模型侧重于全球光影和行人的地方细节。为了提取这种更具代表性的特征,有效的方式是利用多分支的深层模型。然而,通过部分主干结构重复执行的多数多部门方法通常会导致计算成本的大幅增长。在本文件中,我们提议建立一个轻量特质金字塔处(FPB),从不同层次的网络中提取特征,并将其汇总到双向金字塔结构中。通过关注模块和我们拟议的交叉或跨度规范化,FPB大大促进了主干网的运行,只引入了不到1.5M的额外参数。标准基准数据集的广泛实验结果表明,我们提议的基于FPB的模型在明显宽度上优于最新工艺方法,而其复杂性则大大降低。FPB从当前天体检测方法中借用了FC网络(FPN)的功能。根据我们的最佳知识,它可能是在人际光学/ID任务中首次成功应用类似结构,引入了不到1.5M额外参数。在标准基准数据集集中,实验性地证明,以MFPIFCFCS/CFDS 的分支结构是可供使用的潜在源。