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Crossing Nets: Combining GANs and VAEs with a Shared Latent Space for Hand Pose Estimation

机译:穿越网:将GAN和VAE与共享的潜在位姿相结合以进行手姿势估计

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State-of-the-art methods for 3D hand pose estimation from depth images require large amounts of annotated training data. We propose modelling the statistical relationship of 3D hand poses and corresponding depth images using two deep generative models with a shared latent space. By design, our architecture allows for learning from unlabeled image data in a semi-supervised manner. Assuming a one-to-one mapping between a pose and a depth map, any given point in the shared latent space can be projected into both a hand pose or into a corresponding depth map. Regressing the hand pose can then be done by learning a discriminator to estimate the posterior of the latent pose given some depth map. To prevent over-fitting and to better exploit unlabeled depth maps, the generator and discriminator are trained jointly. At each iteration, the generator is updated with the back-propagated gradient from the discriminator to synthesize realistic depth maps of the articulated hand, while the discriminator benefits from an augmented training set of synthesized samples and unlabeled depth maps. The proposed discriminator network architecture is highly efficient and runs at 90fps on the CPU with accuracies comparable or better than state-of-art on 3 publicly available benchmarks.
机译:根据深度图像进行3D手势估计的最新方法需要大量带注释的训练数据。我们建议使用两个具有共享潜在空间的深度生成模型来建模3D手部姿势和相应深度图像的统计关系。通过设计,我们的体系结构允许以半监督方式从未标记的图像数据中学习。假设姿势和深度图之间是一对一的映射,则共享潜空间中的任何给定点都可以投影到手势或相应的深度图中。然后可以通过学习鉴别器以估计给定深度图的潜在姿势的后验来回归手势。为了防止过度拟合并更好地利用未标记的深度图,对生成器和鉴别器进行了联合训练。在每次迭代时,生成器都使用来自鉴别器的反向传播梯度进行更新,以合成关节的手的真实深度图,而鉴别器则受益于合成样本和未标记深度图的增强训练集。拟议的鉴别器网络体系结构非常高效,在CPU上以90fps的速度运行,其精确度与3个公开基准测试中的最新技术相当或更好。

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