Dictionary pair learning in compressed space for action recognition

Zhijun Pei, Yaxin Wang, John Mkhomoi Afridon
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Abstract

Action recognition is still a challenging problem. In order to catch effective compact representation of the action sequences, the discriminative dictionaries could be learned by sparse coding. But sparse coding is needed in both the training and testing phases of the classifier framework. And it is also time consuming for the adoption of 1-norm sparsity constraint on the representation coefficients in most dictionary learning (DL) methods. Dictionary pair learning (DPL) learns a synthesis dictionary and an analysis dictionary jointly. Compared with those DL approaches, the using of DPL method may not only effectively reduce the time consuming during the phases of training and testing, but also result in very competitive recognition ratio. On the other hand, the way of compressed learning can lead to learning with randomly projected data instead of original data. Thus compressed learning could greatly cut down on both the requirement of memory storage and running time due to the effective reduction of data dimensions through random projection. In this paper, Combined with compressed learning, DPL in compressed space are explored for the action recognition. By the experiments on various public action datasets, it has been shown that DPL in compressed space can achieves very competitive accuracy, while it is significantly faster in phases of both training and testing, which indicate the efficiency of the proposed algorithm for action recognition.
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压缩空间中用于动作识别的字典对学习
动作识别仍然是一个具有挑战性的问题。为了捕获动作序列的有效压缩表示,可以通过稀疏编码学习判别字典。但是在分类器框架的训练和测试阶段都需要稀疏编码。在大多数字典学习(DL)方法中,对表示系数采用1范数稀疏性约束也非常耗时。字典对学习(DPL)是一种联合学习合成字典和分析字典的方法。与传统的深度学习方法相比,DPL方法不仅有效地减少了训练和测试阶段的时间消耗,而且具有很强的识别率。另一方面,压缩学习的方式可以导致使用随机投影数据而不是原始数据进行学习。因此,压缩学习通过随机投影有效地降低了数据维数,从而大大降低了对内存存储的需求和运行时间。本文将DPL与压缩学习相结合,在压缩空间中进行动作识别。在各种公共动作数据集上的实验表明,压缩空间下的DPL可以达到非常有竞争力的准确率,并且在训练和测试阶段都明显更快,表明了所提算法在动作识别方面的有效性。
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