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Pointly-Supervised Action Localization

机译:指出的行动本地化

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摘要

This paper strives for spatio-temporal localization of human actions in videos. In the literature, the consensus is to achieve localization by training on bounding box annotations provided for each frame of each training video. As annotating boxes in video is expensive, cumbersome and error-prone, we propose to bypass box-supervision. Instead, we introduce action localization based on point-supervision. We start from unsupervised spatio-temporal proposals, which provide a set of candidate regions in videos. While normally used exclusively for inference, we show spatio-temporal proposals can also be leveraged during training when guided by a sparse set of point annotations. We introduce an overlap measure between points and spatio-temporal proposals and incorporate them all into a new objective of a multiple instance learning optimization. During inference, we introduce pseudo-points, visual cues from videos, that automatically guide the selection of spatio-temporal proposals. We outline five spatial and one temporal pseudo-point, as well as a measure to best leverage pseudo-points at test time. Experimental evaluation on three action localization datasets shows our pointly-supervised approach (1) is as effective as traditional box-supervision at a fraction of the annotation cost, (2) is robust to sparse and noisy point annotations, (3) benefits from pseudo-points during inference, and (4) outperforms recent weakly-supervised alternatives. This leads us to conclude that points provide a viable alternative to boxes for action localization.
机译:本文致力于视频中人类行为的时空定位。在文献中,共识是通过对每个训练视频的每一帧提供的边界框注释进行培训来实现本地化。由于视频中的注释框昂贵,繁琐和容易出错,我们建议绕过箱体监督。相反,我们根据点监督介绍行动定位。我们从无监督的时空建议开始,为视频提供一系列候选地区。虽然通常专门用于推断,但我们展示了在训练期间在被稀疏的点注释的训练期间杠杆杠杆杠杆的时空提案。我们在点和时空建议之间引入重叠度量,并将它们全部纳入多实例学习优化的新目标。在推论期间,我们介绍了伪积分,来自视频的视觉线索,自动指导选择时空提案。我们概述了五个空间和一个时间伪点,以及在测试时间最佳利用伪点的措施。关于三个行动定位数据集的实验评估显示我们的指出监督方法(1)与传统箱监管一样有效,因为在注释成本的一小部分中,(2)对稀疏和嘈杂的点注释具有强大,(3)来自伪的福利 - 在推论期间,(4)胜过最近的弱弱监督替代品。这使我们得出结论,积分为行动本地化提供了一种可行的替代品。

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