抽象的

Accelerating video frames classification with metric based scene segmentation

Adam Blokus, Jan Cychnerski, Adam Brzeski

This paper addresses the problem of the efficient classification of images in a video stream in cases, where all of the video has to be labeled. Realizing the similarity of consecutive frames, we introduce a set of simple metrics to measure that similarity. To use these observations for decreasing the number of necessary classifications, we propose a scene segmentation algorithm. Performed experiments have evaluated the acquired scene sizes and classification accuracy resulting from the usage of different similarity metrics with our algorithm. As a result, we have identified those metrics from the considered set, which show the best characteristics for usage in scene segmentation.

免责声明: 此摘要通过人工智能工具翻译,尚未经过审核或验证