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DAPs: Deep Action Proposals for Action Understanding

机译:坐下:行动理解的深度行动建议

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Object proposals have contributed significantly to recent advances in object understanding in images. Inspired by the success of this approach, we introduce Deep Action Proposals (DAPs), an effective and efficient algorithm for generating temporal action proposals from long videos. We show how to take advantage of the vast capacity of deep learning models and memory cells to retrieve from untrimmed videos temporal segments, which are likely to contain actions. A comprehensive evaluation indicates that our approach outperforms previous work on a large scale action benchmark, runs at 134 FPS making it practical for large-scale scenarios, and exhibits an appealing ability to generalize, i.e. to retrieve good quality temporal proposals of actions unseen in training.
机译:对象提案对图像在图像中的对象理解的最新进步方面做出了重大贡献。灵感来自这种方法的成功,我们引入了深度行动提案(DAPS),一种有效和高效的算法,用于从长视频中产生时间行动提案。我们展示了如何利用深度学习模型和存储器单元的大量容量,以从未经监测的视频时间段检索,这可能包含动作。综合评估表明,我们的方法优于前面的大规模行动基准的工作,以134 FPS运行,使其具有大规模场景,呈现出令人吸引人的能力,即检索在培训中看不见的行动的优质时间建议。

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