Regression Algorithms in Hyperspectral Data Analysis for Meat Quality Detection and Evaluation.
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Da-Wen Sun | Ting-Tiao Pan | Jun-Hu Cheng | Hongbin Pu | Hongbin Pu | Jun‐Hu Cheng | Ting-tiao Pan | Da‐Wen Sun
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