Optics and Precision Engineering, Volume. 28, Issue 8, 1785(2020)
Flotation performance recognition based on dual-modality multiscale CNN features and adaptive deep learning KELM
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LIAO Yi-peng, ZHANG Jin, WANG Zhi-gang, WANG Wei-xing. Flotation performance recognition based on dual-modality multiscale CNN features and adaptive deep learning KELM[J]. Optics and Precision Engineering, 2020, 28(8): 1785
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Received: Mar. 12, 2020
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Published Online: Nov. 2, 2020
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