2023
DOI: 10.48550/arxiv.2303.13477
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TransPoser: Transformer as an Optimizer for Joint Object Shape and Pose Estimation

Abstract: We propose a novel method for joint estimation of shape and pose of rigid objects from their sequentially observed RGB-D images. In sharp contrast to past approaches that rely on complex non-linear optimization, we propose to formulate it as a neural optimization that learns to efficiently estimate the shape and pose. We introduce Deep Directional Distance Function (DeepDDF), a neural network that directly outputs the depth image of an object given the camera viewpoint and viewing direction, for efficient erro… Show more

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References 35 publications
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