Visual Domain Adaptation: A survey of recent advances

Signal Processing Magazine, IEEE  (2015)

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摘要
In pattern recognition and computer vision, one is often faced with scenarios where the training data used to learn a model have different distribution from the data on which the model is applied. Regardless of the cause, any distributional change that occurs after learning a classifier can degrade its performance at test time. Domain adaptation tries to mitigate this degradation. In this article, we provide a survey of domain adaptation methods for visual recognition. We discuss the merits and drawbacks of existing domain adaptation approaches and identify promising avenues for research in this rapidly evolving field.
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关键词
computer vision,image classification,learning (artificial intelligence),object recognition,classifier learning,pattern recognition,visual domain adaptation method,visual recognition,classification algorithms,learning artificial intelligence,visualization,training data
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