SST: Single-Stream Temporal Action Proposals

S. Buch, Victor Escorcia, Chuanqi Shen, Bernard Ghanem, Juan Carlos Niebles
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引用次数: 376

Abstract

Our paper presents a new approach for temporal detection of human actions in long, untrimmed video sequences. We introduce Single-Stream Temporal Action Proposals (SST), a new effective and efficient deep architecture for the generation of temporal action proposals. Our network can run continuously in a single stream over very long input video sequences, without the need to divide input into short overlapping clips or temporal windows for batch processing. We demonstrate empirically that our model outperforms the state-of-the-art on the task of temporal action proposal generation, while achieving some of the fastest processing speeds in the literature. Finally, we demonstrate that using SST proposals in conjunction with existing action classifiers results in improved state-of-the-art temporal action detection performance.
SST:单流暂时行动建议
我们的论文提出了一种新的方法来检测人类行为的时间长,未经修剪的视频序列。我们介绍了单流时间动作提议(Single-Stream Temporal Action Proposals, SST),这是一种新的高效的时间动作提议生成深度架构。我们的网络可以在非常长的输入视频序列中连续运行在单个流中,而不需要将输入分成短的重叠片段或时间窗口进行批处理。我们通过经验证明,我们的模型在时间动作提案生成任务上优于最先进的技术,同时实现了文献中最快的处理速度。最后,我们证明了将SST建议与现有动作分类器结合使用可以提高最先进的时间动作检测性能。
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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