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Learning Hand Latent Features for Unsupervised 3D Hand Pose Estimation

机译:学习手部潜在特征以实现无监督3D姿势估计

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Recent hand pose estimation methods require large numbers of annotated training data to extract the dynamic information from a hand representation.Nevertheless,precise and dense annotation on the real data is difficult to come by and the amount of information passed to the training algorithm is significantly higher.This paper presents an approach to developing a hand pose estimation system which can accurately regress a 3D pose in an unsupervised manner.The whole process is performed in three stages.Firstly,the hand is modelled by a novel latent tree dependency model (LTDM) which transforms internal joints location to an explicit representation.Secondly,we perform predictive coding of image sequences of hand poses in order to capture latent features underlying a given image without supervision.A mapping is then performed between an image depth and a generated representation.Thirdly,the hand joints are regressed using convolutional neural networks to finally estimate the latent pose given some depth map.Finally,an unsupervised error term which is a part of the recurrent architecture ensures smooth estimation of the final pose.To demonstrate the performance of the proposed system,a complete experiment was conducted on three challenging public datasets,ICVL,MSRA,and NYU.The empirical results show the significant performance of our method which is comparable or better than the state-of-the-art approaches.
机译:最近的手部姿势估计方法需要大量带注释的训练数据来从手部表示中提取动态信息。但是,难以对真实数据进行精确且密集的注释,并且传递给训练算法的信息量也大大增加了本文提出了一种开发手势姿势估计系统的方法,该系统可以以无监督的方式准确地回归3D姿势。整个过程分三个阶段进行:首先,通过新型的潜在树依赖模型(LTDM)对手进行建模然后,我们对手势的图像序列进行预测编码,以便在没有监督的情况下捕获给定图像下的潜在特征。然后在图像深度和生成的表示之间执行映射。 ,使用卷积神经网络对手关节进行回归,以最终估计潜在姿势最后,作为递归架构的一部分的无监督误差项可确保最终姿态的平滑估计。为证明所提出系统的性能,对三个具有挑战性的公共数据集ICVL,MSRA进行了完整的实验经验结果表明,我们的方法具有显着的性能,可与最新技术相媲美或更好。

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