Texture features for classification of skin scar multi-photon fluorescence microscopic images
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Yan Li | Yao Liu | Guannan Chen | Haiming Gong | Xiaoqin Zhu | Yao Liu | Yan Li | H. Gong | Xiaoqin Zhu | Guannan Chen
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