Abstract:Most modern hand pose estimation methods rely on Convolutional Neural Networks (CNNs), which typically require a large training dataset to perform well. Exploiting unlabeled data provides a way to reduce the required amount of annotated data. We propose to take advantage of a geometry-aware representation of the human hand, which we learn from multiview images without annotations. The objective for learning this representation is simply based on learning to predict a different view. Our results show that using… Show more
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