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Boundary Adjusted Network Based on Cosine Similarity for Temporal Action Proposal Generation

机译:基于余弦相似性的边界调整网络

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摘要

Detecting temporal actions in long and untrimmed videos is a challenging and important field in computer vision. Generating high-quality proposals is a key step in temporal action detection. A high-quality proposal usually contains two main characteristics. One is the temporal overlaps between proposals and action instances should be as large as possible. The another one is the number of generated proposals should be as few as possible. Inspired by the similarity comparison in face recognition and the similarity of action in same action segment, we design a module to compare the similarity for visual features extracted from visual feature encoder. We find out time points where the similarity of features changes shapely to generate candidate proposals. Then, we train a classifier to evaluate the candidate proposals whether contains or not contains action instances. The experiments suggest that our method outperforms other temporal action proposal generation methods in THUMOS-14 dataset and ActivityNet-v1.3 dataset. In addition, our method still outperforms other methods when using different visual features extracted from different networks.
机译:在长期和未经监测视频中检测时间动作是计算机视觉中的具有挑战性和重要领域。产生高质量提案是时间动作检测的关键步骤。高质量的提案通常包含两个主要特征。一个是建议和行动实例之间的时间重叠应尽可能大。另一个是所产生的建议的数量应该尽可能少。灵感来自于面部识别的相似性比较和相同动作段中的动作的相似性,我们设计一个模块,比较从视觉特征编码器提取的视觉功能的相似性。我们发现功能相似性变得匀称,以生成候选建议。然后,我们训练分类器以评估候选建议是否包含或不包含动作实例。该实验表明,我们的方法优于Thumos-14数据集和ActivityNet-V1.3数据集中的其他时间动作提案生成方法。此外,当使用从不同网络中提取的不同视觉功能时,我们的方法仍然优于其他方法。

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