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HOnnotate: A method for 3D Annotation of Hand and Objects Poses

Abstract

We propose a method for annotating images of a hand manipulating an object with the 3D poses of both the hand and the object, together with a dataset created using this method. There is a current lack of annotated real images for this problem, as estimating the 3D poses is challenging, mostly because of the mutual occlusions between the hand and the object. To tackle this challenge, we capture sequences with one or several RGB-D cameras, and jointly optimizes the 3D hand and object poses over all the frames \emph{simultaneously}. This method allows us to automatically annotate each frame with accurate estimates of the poses, despite large mutual occlusions. With this method, we created \datasetname, the first markerless dataset of color images with 3D annotations of both hand and object. This dataset is currently made of 80,000 frames, 65 sequences, 10 persons, and 10 objects, and growing, and we will make it publicly available upon publication. We also use it to train a deepnet to perform RGB-based single frame hand pose estimation and provide a baseline on our dataset.

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