Learning color space adaptation from synthetic to real images of cirrus clouds

24 Oct 2018Qing LyuXiang Chen

Training on synthetic data is becoming popular in vision due to the convenient acquisition of accurate pixel-level labels. But the domain gap between synthetic and real images significantly degrades the performance of the trained model... (read more)

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