AWSD:视频表示的自适应加权时空蒸馏

M. Tavakolian, H. R. Tavakoli, A. Hadid
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引用次数: 6

摘要

我们提出了一种自适应加权时空蒸馏(AWSD)技术,通过将视频的外观和动态编码到单个RGB图像映射中来表示视频。这是通过自适应地将视频分成小段,并比较两个连续的片段来获得的。这允许在静止图像上使用预训练模型进行视频分类,同时成功捕获视频中的时空变化。自适应片段选择能够有效地对未修剪视频的基本判别信息进行编码。在高斯尺度混合的基础上,通过提取两个连续片段之间的互信息来计算权重。与基于池的方法不同,我们的AWSD由于其自适应片段长度选择而更加重视表征动作或事件的帧。我们进行了广泛的实验分析,以评估我们提出的方法的有效性,并将我们的结果与四个基准数据集(包括UCF101、HMDB51、ActivityNet v1.3和Maryland)上最新的最先进方法的结果进行了比较。在这些基准数据集上获得的结果表明,我们的方法明显优于先前的工作,并在视频分类中设置了新的最先进的性能。代码可在项目网页上获得:https://mohammadt68.github.io/AWSD/
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AWSD: Adaptive Weighted Spatiotemporal Distillation for Video Representation
We propose an Adaptive Weighted Spatiotemporal Distillation (AWSD) technique for video representation by encoding the appearance and dynamics of the videos into a single RGB image map. This is obtained by adaptively dividing the videos into small segments and comparing two consecutive segments. This allows using pre-trained models on still images for video classification while successfully capturing the spatiotemporal variations in the videos. The adaptive segment selection enables effective encoding of the essential discriminative information of untrimmed videos. Based on Gaussian Scale Mixture, we compute the weights by extracting the mutual information between two consecutive segments. Unlike pooling-based methods, our AWSD gives more importance to the frames that characterize actions or events thanks to its adaptive segment length selection. We conducted extensive experimental analysis to evaluate the effectiveness of our proposed method and compared our results against those of recent state-of-the-art methods on four benchmark datatsets, including UCF101, HMDB51, ActivityNet v1.3, and Maryland. The obtained results on these benchmark datatsets showed that our method significantly outperforms earlier works and sets the new state-of-the-art performance in video classification. Code is available at the project webpage: https://mohammadt68.github.io/AWSD/
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