Multi-object tracking techniques are receiving increasing attention due to the growing demand of autonomous driving. Recently, the performance of multi-object tracking has been improved significantly thank to deep learning technique. Most of multi-object tracking methods based on deep learning, however, are highly prone to frequent tracking losses and track-ID switching in case of limited viewpoint and occluded objects. To alleviate this problem, we propose a multi-camera Collaborate Multi Object Tracking (CMOT) method which performs online association of multiple tracked vehicles from stereo vision camera. CMOT not only provides global tracking IDs between multiple cameras but also helps reduce the problem of ID switching compared with the conventional multi-object tracking based on single camera. It can, therefore, improve the overall performance of multi-vehicle tracking compared to each individual camera. We demonstrate the multi-object tracking performance of the proposed method using stereo images of the KITTI dataset.
목차
Abstract I. INTRODUCTION II. MAIN ALGORITHM III. EXPERIMENTS A. Evaluation metrics B. Implementation details C. Preliminary results IV. CONCLUSTION REFERENCES
저자
Phong Phu Ninh [ Department of Electronic Engineering Chungbuk National University Cheongju, South Korea ]
Hyungwon Kim [ Department of Electronic Engineering Chungbuk National University Cheongju, South Korea ]
Corresponding Author