2021
DOI: 10.48550/arxiv.2109.07165
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3D Annotation Of Arbitrary Objects In The Wild

Abstract: Recent years have produced a variety of learning based methods in the context of computer vision and robotics. Most of the recently proposed methods are based on deep learning, which require very large amounts of data compared to traditional methods. The performance of the deep learning methods are largely dependent on the data distribution they were trained on, and it is important to use data from the robot's actual operating domain during training. Therefore, it is not possible to rely on pre-built, generic … Show more

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