In literature there are several approaches for automated person detection in point clouds. While most techniques show acceptable results in object detection, the computation time is often crucial. The runtime can be problematic, especially due to the amount of data in the panoramic 360° point clouds. On the other hand, for most applications an object detection and classification in real time is needed.
The paper presents a proposal for a fast, real-time capable algorithm for person detection, classification and tracking in panoramic point clouds.