Multi-camera multiple people tracking has become an increasingly important area of research due to the growing demand for accurate and efficient indoor people tracking systems, particularly in settings such as retail, healthcare centers, and transit hubs. We proposed a novel multi-camera multiple people tracking method that uses anchor-guided clustering for cross-camera re-identification and spatio-temporal consistency for geometry-based cross-camera ID reassigning. Our approach aims to improve the accuracy of tracking by identifying key features that are unique to every individual and utilizing the overlap of views between cameras to predict accurate trajectories without needing the actual camera parameters. The method has demonstrated robustness and effectiveness in handling both synthetic and real-world data. The proposed method is evaluated on CVPR AI City Challenge 2023 dataset, achieving IDF1 of 95.36% with the first-place ranking in the challenge. The code is available at: https://github.com/ipl-uw/AIC23_Track1_UWIPL_ETRI.
翻译:多摄像头多人跟踪已成为一个越来越重要的研究领域,由于对于室内人员跟踪系统的准确和高效的需求不断增加,特别是在零售、医疗中心和交通枢纽等场景中。我们提出了一种新颖的多摄像头多人跟踪方法,利用锚点引导聚类实现跨摄像头重新识别和时空连续性实现几何-基础的跨摄像头ID重新分配。我们的方法旨在通过确定每个人独特的关键特征并利用摄像头视图的重叠来预测准确的轨迹,而无需实际的摄像头参数,从而提高跟踪的准确率。该方法已经证明在处理合成和现实世界数据方面具有鲁棒性和有效性。所提出的方法在CVPR AI City Challenge 2023数据集上进行评估,在挑战赛中获得了95.36%的IDF1分数,并获得了第一名的排名。该代码可在以下网址访问:https://github.com/ipl-uw/AIC23_Track1_UWIPL_ETRI。