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Improved Rank Pooling Strategy for Complex Action Recognition

机译:改进复杂行动识别的排名汇集策略

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Feature ranking from video-wide temporal evolution brings reliable information for complex action recognition. However, a video may contain similar features in the sequence of frames which deliver unnecessary information to the ranking function. This paper proposes a method to improve the rankpooling strategy which captures the optimized latent structure of the video sequence data. The optimization is followed by removing the redundant features from the sequence data. The cosine and correlation distance metrics are employed to detect the identical features and extract the most efficient information from the video frames. Then, the ranked features are generated from the optimized and clean sequence data. The proposed improvement is easy to implement, fast to compute and effective in recognizing complex actions. As a result, the proposed approach reaches remarkable action recognition performance on benchmark datasets, namely Hollywood2, URADL, and HMDB51. The results are further compared with state-of-the-art techniques in the experiment section to confirm the effectiveness of the improved rank pooling framework.
机译:来自视频范围的时间演变的特征排名带来了复杂动作识别的可靠信息。然而,视频可以包含在帧序列中的类似特征,其向排名函数提供不必要的信息。本文提出了一种改进捕获视频序列数据的优化潜在结构的rantpooling策略的方法。然后通过序列数据删除冗余功能的优化。使用余弦和相关距离度量来检测相同的特征并从视频帧中提取最有效的信息。然后,排序的特征是从优化和清洁序列数据生成的。拟议的改进易于实施,快速计算和有效地识别复杂的动作。因此,所提出的方法在基准数据集中达到了显着的行动识别性能,即好莱坞2,URADL和HMDB51。结果进一步与实验部分中的最先进技术相比,以确认改进等级汇集框架的有效性。

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