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Human articulated body parts bending motion classification based on Dictionary-Learning Sparse Representation

机译:基于字典学习稀疏表示的人体关节部位弯曲运动分类

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In this paper a method is developed to estimate human articulated body parts bending motion based on Dictionary-Learning Sparse Representation (DLSR). The extracted features for training the dictionary are achieved by deformation gradient of proposed part, which is the non-translation portion of an affine transformation that determines the change between original shape and deformed shape. In order to train the dictionary for motion classification, we minimize the reconstruction error of the target shape. Then, all trained dictionaries from motion classes are combined to construct an over-complete dictionary for sparse representation and classification. We evaluate our approach to different topological structure of human arm and leg shape. The experimental results show the effectiveness of our approach for treating the bending motion classification in different images.
机译:本文提出了一种基于字典学习稀疏表示(DLSR)的人体关节弯曲动作估计方法。提取的用于训练字典的特征是通过拟议部分的变形梯度实现的,该部分是仿射变换的非平移部分,该仿射变换确定了原始形状和变形形状之间的变化。为了训练字典进行运动分类,我们将目标形状的重建误差最小化。然后,将来自运动类的所有经过训练的词典进行组合,以构建用于稀疏表示和分类的过完整字典。我们评估了针对人类手臂和腿部形状的不同拓扑结构的方法。实验结果表明我们的方法在不同图像中处理弯曲运动分类的有效性。

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