IEEE Trans Image Process. 2019 Apr;28(4):1575-1590. doi: 10.1109/TIP.2018.2878349. Epub 2018 Oct 26.
Retrieving specific persons with various types of queries, e.g., a set of attributes or a portrait photo has great application potential in large-scale intelligent surveillance systems. In this paper, we propose a richly annotated pedestrian (RAP) dataset which serves as a unified benchmark for both attribute-based and image-based person retrieval in real surveillance scenarios. Typically, previous datasets have three improvable aspects, including limited data scale and annotation types, heterogeneous data source, and controlled scenarios. Differently, RAP is a large-scale dataset which contains 84928 images with 72 types of attributes and additional tags of viewpoint, occlusion, body parts, and 2589 person identities. It is collected in the real uncontrolled scene and has complex visual variations in pedestrian samples due to the change of viewpoints, pedestrian postures, and cloth appearance. Towards a high-quality person retrieval benchmark, an amount of state-of-the-art algorithms on pedestrian attribute recognition and person re-identification (ReID), are performed for quantitative analysis with three evaluation tasks, i.e., attribute recognition, attribute-based and image-based person retrieval, where a new instance-based metric is proposed to measure the dependency of the prediction of multiple attributes. Finally, some interesting problems, e.g., the joint feature learning of attribute recognition and ReID, and the problem of cross-day person ReID, are explored to show the challenges and future directions in person retrieval.
从各种类型的查询中检索特定的人,例如一组属性或人像照片,在大规模智能监控系统中有很大的应用潜力。在本文中,我们提出了一个丰富标注的行人(RAP)数据集,它是真实监控场景中基于属性和基于图像的行人检索的统一基准。通常,以前的数据集在三个方面存在改进空间,包括有限的数据规模和标注类型、异构数据源和受控场景。不同的是,RAP 是一个大规模数据集,包含 84928 张图像,具有 72 种属性以及视点、遮挡、身体部位和 2589 个人身份的额外标签。它是在真实的非受控场景中收集的,由于视点、行人姿势和服装外观的变化,行人样本具有复杂的视觉变化。为了实现高质量的行人检索基准,我们针对行人属性识别和行人重识别(ReID)的最新算法进行了大量的研究,并针对三个评估任务,即属性识别、基于属性和基于图像的行人检索,进行了定量分析,提出了一种新的基于实例的度量标准来衡量多个属性预测的依赖性。最后,我们探讨了一些有趣的问题,例如属性识别和 ReID 的联合特征学习以及跨天行人 ReID 问题,以展示行人检索中的挑战和未来方向。