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Multi-Scale Locality-Constrained Spatiotemporal Coding for Local Feature Based Human Action Recognition

机译:基于本地特征的人体行动识别的多尺度局部限制的时空编码

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We propose a Multiscale Locality-Constrained Spatiotemporal Coding (MLSC) method to improve the traditional bag of features (BoF) algorithm which ignores the spatiotemporal relationship of local features for human action recognition in video. To model this spatiotemporal relationship, MLSC involves the spatiotemporal position of local feature into feature coding processing. It projects local features into a sub space-time-volume (sub-STV) and encodes them with a locality-constrained linear coding. A group of sub-STV features obtained from one video with MLSC and max-pooling are used to classify this video. In classification stage, the Locality-Constrained Group Sparse Representation (LGSR) is adopted to utilize the intrinsic group information of these sub-STV features. The experimental results on KTH, Weizmann, and UCF sports datasets show that our method achieves better performance than the competing local spatiotemporal feature-based human action recognition methods.
机译:我们提出了一种多尺度地方约束的时空编码(MLSC)方法,以改善传统的特征袋(BOF)算法,忽略视频中局部特征的时空关系。为了模拟这种时空关系,MLSC涉及局部特征的时空位置到特征编码处理中。它将本地特征投影为子空间 - 时间卷(子STV),并用位置约束线性编码对它们进行编码。从一个带有MLSC和MAX池的视频获得的一组子STV功能用于对该视频进行分类。在分类阶段,采用了地区约束的群体稀疏表示(LGSR)来利用这些子STV特征的内在组信息。 Kth,Weizmann和UCF运动数据集的实验结果表明,我们的方法比竞争的地方时尚特征的人体行动识别方法实现了更好的性能。

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