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Parts based representation for pedestrian using NMF with robustness to partial occlusion

机译:基于零件的STESTRIAN的代表使用NMF具有鲁棒性来部分闭塞

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Computer Vision has seen a resurgence in the parts-based representation for objects over the past few years. The parts are usually annotated beforehand for training. We present an annotation free parts-based representation for the pedestrian using Non-Negative Matrix Factorization (NMF). We show that NMF is able to capture the wide range of pose and clothing of the pedestrians. We use a modified form of NMF i.e. NMF with sparsity constraints on the factored matrices. We also make use of Riemannian distance metric for similarity measurements in NMF space as the basis vectors generated by NMF aren't orthogonal. We show that for 1% drop in accuracy as compared to the Histogram of Oriented Gradients (HOG) representation we can achieve robustness to partial occlusion.
机译:计算机愿景在过去几年中,对物品的基于零件的代表进行了复兴。这些部件通常预先注释进行培训。我们使用非负矩阵分解(NMF)为行人提供了基于自由零件的批注表示。我们表明NMF能够捕捉到行人的各种姿势和衣服。我们使用具有在因子矩阵上的稀疏限制的NMF I. NMF的修改形式。我们还利用Riemannian距离度量在NMF空间中的相似度测量,因为NMF产生的基向量不是正交的。与面向梯度(猪)表示的直方图相比,我们表明,精度下降了1%,我们可以实现部分闭塞的鲁棒性。

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