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Action Recognition Based on Local Fisher Discriminant Analysis and Mix Encoding

机译:基于本地Fisher判别分析和混合编码的行动识别

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Action recognition has been one of the most popular fields of computer vision. This paper presents a novel approach to action recognition problem using the dimension reduction method, local fisher discriminant analysis, to reduce the dimension of feature descriptors as the preprocessing step after feature extraction. We propose to use sparse matrix and randomized kd-tree to modify and accelerate the standard local fisher discriminant analysis and propose the modified local fisher discriminant analysis. We also propose an effective feature encoding called mix encoding to combine fisher vector encoding and locality-constrained linear coding to obtain video representations. The experiments show the methods clearly improve the recognition accuracy. Experimental results show our method outperforms our baseline method and can be the state of the art in the KTH dataset.
机译:行动识别是计算机愿景最受欢迎的领域之一。本文介绍了使用尺寸减少方法,本地FISHER判别分析的动作识别问题的新方法,以减少特征提取后作为预处理步骤的特征描述符的维度。我们建议使用稀疏矩阵和随机的KD树来修改和加速标准本地Fisher判别分析,并提出改进的本地Fisher判别分析。我们还提出了一种被称为混合编码的有效特征编码,以组合Fisher向量编码和位置约束线性编码以获得视频表示。实验表明,该方法显然提高了识别准确性。实验结果表明,我们的方法优于我们的基线方法,可以是kth数据集中的现有技术。

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