2022
DOI: 10.3389/frobt.2022.833173
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Visual state estimation in unseen environments through domain adaptation and metric learning

Abstract: In robotics, deep learning models are used in many visual perception applications, including the tracking, detection and pose estimation of robotic manipulators. The state of the art methods however are conditioned on the availability of annotated training data, which may in practice be costly or even impossible to collect. Domain augmentation is one popular method to improve generalization to out-of-domain data by extending the training data set with predefined sources of variation, unrelated to the primary t… Show more

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