Xu Min
Paper download is intended for registered attendees only, and is
subjected to the IEEE Copyright Policy. Any other use is strongly forbidden.
Papers from this author
Multi-Camera Sports Players 3D Localization with Identification Reasoning
Yukun Yang, Ruiheng Zhang, Wanneng Wu, Yu Peng, Xu Min
Auto-TLDR; Probabilistic and Identified Occupancy Map for Sports Players 3D Localization
Abstract Slides Poster Similar
Multi-camera sports players 3D localization is always a challenging task due to heavy occlusions in crowded sports scene. Traditional methods can only provide players locations without identification information. Existing methods of localization may cause ambiguous detection and unsatisfactory precision and recall, especially when heavy occlusions occur. To solve this problem, we propose a generic localization method by providing distinguishable results that have the probabilities of locations being occupied by players with unique ID labels. We design the algorithms with a multi-dimensional Bayesian model to create a Probabilistic and Identified Occupancy Map (PIOM). By using this model, we jointly apply deep learning-based object segmentation and identification to obtain sports players probable positions and their likely identification labels. This approach not only provides players 3D locations but also gives their ID information that are distinguishable from others. Experimental results demonstrate that our method outperforms the previous localization approaches with reliable and distinguishable outcomes.