A Unified Video Segmentation Benchmark: Annotation, Metrics and Analysis

Fabio Galasso, N. Nagaraja, Tatiana Jimenez Cardenas, T. Brox, B. Schiele
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引用次数: 168

Abstract

Video segmentation research is currently limited by the lack of a benchmark dataset that covers the large variety of sub problems appearing in video segmentation and that is large enough to avoid over fitting. Consequently, there is little analysis of video segmentation which generalizes across subtasks, and it is not yet clear which and how video segmentation should leverage the information from the still-frames, as previously studied in image segmentation, alongside video specific information, such as temporal volume, motion and occlusion. In this work we provide such an analysis based on annotations of a large video dataset, where each video is manually segmented by multiple persons. Moreover, we introduce a new volume-based metric that includes the important aspect of temporal consistency, that can deal with segmentation hierarchies, and that reflects the tradeoff between over-segmentation and segmentation accuracy.
一个统一的视频分割基准:标注、度量和分析
视频分割研究目前受到缺乏一个基准数据集的限制,该数据集涵盖了视频分割中出现的大量子问题,并且足够大以避免过度拟合。因此,很少有跨子任务的视频分割分析,目前还不清楚视频分割应该利用静止帧的信息,如先前在图像分割中研究的那样,以及视频特定信息,如时间体积,运动和遮挡。在这项工作中,我们基于大型视频数据集的注释提供了这样的分析,其中每个视频都是由多人手动分割的。此外,我们引入了一种新的基于体积的度量,该度量包括时间一致性的重要方面,可以处理分割层次,并反映了过度分割和分割精度之间的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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