Learning to adapt for stereo
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Tonioni, Alessio
Rahnama, Oscar
Joy, Thomas
Di Stefano, Luigi
Ajanthan, Thalaiyasingam
Torr, Philip H.S.
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IEEE
Abstract
Real world applications of stereo depth estimation require models that are robust to dynamic variations in the
environment. Even though deep learning based stereo methods are successful, they often fail to generalize to unseen
variations in the environment, making them less suitable for
practical applications such as autonomous driving. In this
work, we introduce a “learning-to-adapt” framework that
enables deep stereo methods to continuously adapt to new
target domains in an unsupervised manner. Specifically,
our approach incorporates the adaptation procedure into
the learning objective to obtain a base set of parameters
that are better suited for unsupervised online adaptation.
To further improve the quality of the adaptation, we learn
a confidence measure that effectively masks the errors introduced during the unsupervised adaptation. We evaluate
our method on synthetic and real-world stereo datasets and
our experiments evidence that learning-to-adapt is, indeed
beneficial for online adaptation on vastly different domains.
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Restricted until
2099-12-31
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