以高光谱数据有效预测苹果可溶性固形物含量
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黄文倩, 李江波, 陈立平, 郭志明. 以高光谱数据有效预测苹果可溶性固形物含量[J]. 光谱学与光谱分析, 2013, 33(10): 2843. HUANG Wen-qian, LI Jiang-bo, CHEN Li-ping, GUO Zhi-ming. Effectively Predicting Soluble Solids Content in Apple Based on Hyperspectral Imaging[J]. Spectroscopy and Spectral Analysis, 2013, 33(10): 2843.