Evaluation of Object Detection Systems and Video Tracking in Skiing Videos (bibtex)
@InProceedings{Steinkellner2021, author = {Philip Steinkellner and Klaus Schöffmann}, booktitle = {2021 International Conference on Content-Based Multimedia Indexing (CBMI)}, title = {{Evaluation of Object Detection Systems and Video Tracking in Skiing Videos}}, year = {2021}, month = {jun}, pages = {1--6}, publisher = {IEEE}, abstract = {Nowadays, modern ski resorts provide additional services to customers, such as recording videos of specific moments from their skiing experience. This and similar tasks can be achieved by using computer vision methods. In this work, we evaluate the detection performance of current object detection methods and the tracking performance of a detection-based tracking algorithm. The evaluation is based on videos of skiers and snowboarders from ski resorts. We collect videos of race tracks from different resorts and compile a public dataset of images and videos, where skiers and snowboarders are annotated with bounding boxes. Based on this data, we evaluate the performance of four state-of-the-art object detection methods. This evaluation is performed with general models trained on the MS COCO dataset as well as with custom models trained on our dataset. In addition, we review the performance of the detection-based, multi-object tracking algorithm Deep SORT, which we adapt for skier tracking.The results show promising performance and reveal that the MS COCO models already achieve high Precision, while training a custom model additionally improves the performance. Bigger models profit from custom training in terms of more accurate bounding box placement and higher Precision, while smaller models have an overall high training payoff. The modified Deep SORT tracker manages to follow a skier’s trajectory over an extended period and operates with high accuracy, which indicates that the tracker is overall well suited for tracking of skiers and snowboarders on race tracks. Even when exposed to strong camera and skier movement changes, the tracker stays latched onto the target.}, doi = {10.1109/cbmi50038.2021.9461905}, keywords = {Object Detection, Object Tracking, YOLOv4, Faster R-CNN, Deep SORT, Skiing, Sports Video Analysis}, url = {http://dx.doi.org/10.1109/cbmi50038.2021.9461905} }
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