Don’t Worry About the Weather: Unsupervised Condition-Dependent Domain Adaptation

2019 IEEE Intelligent Transportation Systems Conference (ITSC)(2019)

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摘要
Modern models that perform system-critical tasks such as segmentation and localization exhibit good performance and robustness under ideal conditions (i.e. daytime, overcast) but performance degrades quickly and often catastrophically when input conditions change. In this work, we present a domain adaptation system that uses light-weight input adapters to pre-processes input images, irrespective of their appearance, in a way that makes them compatible with off-the-shelf computer vision tasks that are trained only on inputs with ideal conditions. No fine-tuning is performed on the off-the-shelf models, and the system is capable of incrementally training new input adapters in a self-supervised fashion, using the computer vision tasks as supervisors, when the input domain differs significantly from previously seen domains. We report large improvements in semantic segmentation and topological localization performance on two popular datasets, RobotCar and BDD.
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关键词
weather,unsupervised condition-dependent domain adaptation,modern models,system-critical tasks,robustness,input conditions change,domain adaptation system,light-weight input adapters,input images,off-the-shelf computer vision tasks,off-the-shelf models,input domain,semantic segmentation,topological localization performance
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