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Eigen-Evolution Dense Trajectory Descriptors

机译:eIgen-evolution致密轨迹描述符

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Trajectory-pooled Deep-learning Descriptors have been the state-of-the-art feature descriptors for human action recognition in video on many datasets. This paper improves their performance by applying the proposed eigen-evolution pooling to each trajectory, encoding the temporal evolution of deep learning features computed along the trajectory. This leads to Eigen-Evolution Trajectory (EET) descriptors, a novel type of video descriptor that significantly outperforms Trajectory-pooled Deep-learning Descriptors. EET descriptors are defined based on dense trajectories, and they provide complimentary benefits to video descriptors that are not based on trajectories. Empirically, we observe that the combination of EET descriptors and VideoDarwin outperforms the state-of-the-art methods on the Hollywood2 dataset, and its performance on the UCF101 dataset is close to the state-of-the-art.
机译:轨迹汇总的深度学习描述符是在许多数据集中的视频中的人类行动识别的最先进的特征描述符。本文通过将建议的特征演化汇总汇总到每个轨迹来改善它们的性能,编码沿着轨迹计算的深度学习特征的时间演变。这导致特征向量轨迹(EET)描述符,一种新颖的视频描述符,可显着优于轨迹汇总的深学习描述符。 EET描述符是基于致密轨迹定义的,它们为非基于轨迹的视频描述符提供免费优势。经验上,我们观察到EET描述符和videodarwin的组合优于Hollywood2数据集的最先进的方法,并且其在UCF101数据集上的性能接近最先进的。

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