Focus on machine learning (especially transfer learning) and its application on biomedical data processing and analysis.
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- Zhang K, Zuo W, Chen Y, et al. Beyond a gaussian denoiser: Residual learning of deep cnn for image denoising[J]. IEEE Transactions on Image Processing, 2017, 26(7): 3142-3155. [paper]⭐⭐⭐⭐
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