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PON: Proposal Optimization Network for Temporal Action Proposal Generation

机译:PON:临时行动提案的提案优化网络

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Temporal action localization is a challenging task in video understanding. Although great progress has been made in temporal action localization, the most advanced methods still have the problem of sharp performance degradation when an action proposal generated. Most methods use sliding windows method or simply group frames according to frame-level scores. These methods are not enough to provide accurate action boundary and maintain reasonable temporal structure. In order to solve these problems, we propose a novel proposal optimization network to generate start score, end score, action score and regression score, and then remove the redundancy by NMS algorithm. In the proposed method, we introduce a metric loss function to maintain the temporal structure of action proposal in the training process. To verify the effectiveness of the proposed method, we have made comparative experiments on ActivityNet-1.3 dataset respectively, and the proposed method has surpassed some of the state-of-the-art methods on the dataset.
机译:时间行动本地化是视频理解中有挑战性的任务。虽然在时间行动本地化方面取得了巨大进展,但最先进的方法仍然存在在产生行动提案时急剧下降的问题。大多数方法使用滑动Windows方法或简单的帧级别分数。这些方法不足以提供准确的动作边界并保持合理的时间结构。为了解决这些问题,我们提出了一种新颖的提案优化网络来生成开始得分,结束分数,动作分数和回归分数,然后通过NMS算法删除冗余。在该方法中,我们介绍了公制损失功能,以维持在培训过程中的行动提案的时间结构。为了验证所提出的方法的有效性,我们分别对ActivityNet-1.3数据集进行了比较实验,并且所提出的方法超过了数据集上的一些最先进的方法。

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