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A 2D Human Body Model Dressed in Eigen Clothing

机译:穿着本征服装的2D人体模型

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Detection, tracking, segmentation and pose estimation of people in monocular images are widely studied. Two-dimensional models of the human body are extensively used, however, they are typically fairly crude, representing the body either as a rough outline or in terms of articulated geometric primitives. We describe a new 2D model of the human body contour that combines an underlying naked body with a low-dimensional clothing model. The naked body is represented as a Contour Person that can take on a wide variety of poses and body shapes. Clothing is represented as a deformation from the underlying body contour. This deformation is learned from training examples using principal component analysis to produce eigen clothing. We find that the statistics of clothing deformations are skewed and we model the a priori probability of these deformations using a Beta distribution. The resulting generative model captures realistic human forms in monocular images and is used to infer 2D body shape and pose under clothing. We also use the coefficients of the eigen clothing to recognize different categories of clothing on dressed people. The method is evaluated quantitatively on synthetic and real images and achieves better accuracy than previous methods for estimating body shape under clothing.
机译:对单眼图像中人的检测,跟踪,分割和姿势估计进行了广泛的研究。人体的二维模型被广泛使用,但是,它们通常是相当粗糙的,以粗略的轮廓或以铰接的几何图元形式表示人体。我们描述了一个新的2D人体轮廓模型,该模型将基础裸露的身体与低尺寸的服装模型结合在一起。裸露的身体表示为轮廓人物,可以采取各种姿势和身体形状。衣服表示为来自下层身体轮廓的变形。这种变形是通过使用主成分分析来生成特征服装的训练示例中获悉的。我们发现服装变形的统计数据是偏斜的,并且我们使用Beta分布对这些变形的先验概率进行建模。生成的生成模型在单眼图像中捕获现实的人类形式,并用于推断2D身体形状和衣服下的姿势。我们还使用本征服装的系数来识别穿着打扮的人的服装的不同类别。该方法在合成图像和真实图像上进行了定量评估,比以前估计衣服下体形的方法具有更高的准确性。

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