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Learning Generative Models for Multi-Activity Body Pose Estimation

机译:学习生成模型的多活动身体姿势估计

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摘要

We present a method to simultaneously estimate 3D body pose and action categories from monocular video sequences. Our approach learns a generative model of the relationship of body pose and image appearance using a sparse kernel regressor. Body poses are modelled on a low-dimensional manifold obtained by Locally Linear Embedding dimensionality reduction. In addition, we learn a prior model of likely body poses and a dynamical model in this pose manifold. Sparse kernel regressors capture the nonlinearities of this mapping efficiently. Within a Recursive Bayesian Sampling framework, the potentially multimodal posterior probability distributions can then be inferred. An activity-switching mechanism based on learned transfer functions allows for inference of the performed activity class, along with the estimation of body pose and 2D image location of the subject. Using a rough foreground segmentation, we compare Binary PCA and distance transforms to encode the appearance. As a postprocessing step, the globally optimal trajectory through the entire sequence is estimated, yielding a single pose estimate per frame that is consistent throughout the sequence. We evaluate the algorithm on challenging sequences with subjects that are alternating between running and walking movements. Our experiments show how the dynamical model helps to track through poorly segmented low-resolution image sequences where tracking otherwise fails, while at the same time reliably classifying the activity type.
机译:我们提出了一种从单眼视频序列同时估计3D人体姿势和动作类别的方法。我们的方法使用稀疏核回归函数学习人体姿势与图像外观之间关系的生成模型。在通过局部线性嵌入维数减少获得的低维流形上对人体姿势建模。此外,我们学习了可能的人体姿势的先验模型和该姿势多方面的动力学模型。稀疏内核回归器可有效捕获此映射的非线性。在递归贝叶斯抽样框架内,然后可以推断出潜在的多峰后验概率分布。基于学习的传递函数的活动切换机制允许推断所执行的活动类别,以及对象的身体姿势和2D图像位置的估计。使用粗略的前景分割,我们比较Binary PCA和距离变换来编码外观。作为后处理步骤,估计整个序列的全局最优轨迹,从而在整个序列中每帧产生一个单一的姿态估计。我们对具有挑战性的序列进行评估,该序列具有在跑步和步行运动之间交替的主题。我们的实验表明,动力学模型如何帮助跟踪经过细分的低分辨率图像序列,否则跟踪会失败,同时可靠地对活动类型进行分类。

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