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Temporal Action Localization with Pyramid of Score Distribution Features

机译:具有分数分布特征金字塔的时间动作本地化

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We investigate the feature design and classification architectures in temporal action localization. This application focuses on detecting and labeling actions in untrimmed videos, which brings more challenge than classifying presegmented videos. The major difficulty for action localization is the uncertainty of action occurrence and utilization of information from different scales. Two innovations are proposed to address this issue. First, we propose a Pyramid of Score Distribution Feature (PSDF) to capture the motion information at multiple resolutions centered at each detection window. This novel feature mitigates the influence of unknown action position and duration, and shows significant performance gain over previous detection approaches. Second, inter-frame consistency is further explored by incorporating PSDF into the state-of-the-art Recurrent Neural Networks, which gives additional performance gain in detecting actions in temporally untrimmed videos. We tested our action localization framework on the THUMOS'15 and MPII Cooking Activities Dataset, both of which show a large performance improvement over previous attempts.
机译:我们调查时间动作本地化中的特征设计和分类体系结构。该应用程序专注于检测和标记未修剪视频中的动作,这比对已分割视频进行分类带来了更大的挑战。动作定位的主要困难是动作发生的不确定性以及来自不同规模的信息的利用。提出了两种创新来解决此问题。首先,我们提出了分数分布特征金字塔(PSDF),以在每个检测窗口为中心的多种分辨率下捕获运动信息。此新颖功能减轻了未知动作位置和持续时间的影响,并显示出比以前的检测方法显着的性能提升。其次,通过将PSDF集成到最新的递归神经网络中来进一步探索帧间一致性,这在检测时间未修剪的视频中的动作方面具有额外的性能提升。我们在THUMOS'15和MPII烹饪活动数据集上测试了行动本地化框架,这两个框架均显示出比以前的尝试有较大的性能提升。

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