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Training Deformable Object Models for Human Detection Based on Alignment and Clustering

机译:基于对准和聚类训练人类检测的可变形对象模型

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We propose a clustering method that considers non-rigid alignment of samples. The motivation for such a clustering is training of object detectors that consist of multiple mixture components. In particular, we consider the deformable part model (DPM) of Felzenszwalb et al., where each mixture component includes a learned deformation model. We show that alignment based clustering distributes the data better to the mixture components of the DPM than previous methods. Moreover, the alignment helps the non-convex optimization of the DPM find a consistent placement of its parts and, thus, learn more accurate part filters.
机译:我们提出了一种聚类方法,其考虑了样品的非刚性对准。这种聚类的动机是对由多个混合组件组成的物体检测器的训练。特别地,我们考虑Felzenszwalb等人的可变形部分模型(DPM),其中每个混合组分包括学习的变形模型。我们表明基于对齐的群集将数据分发给DPM的混合组件而不是先前的方法。此外,对准有助于DPM的非凸优化找到其部分的一致放置,从而了解更多准确的部分过滤器。

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