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Optimized NIRS-machine learning framework for rapid multi-trait quality assessment of fresh tea leaves

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Publication date: 1 December 2025

Source: LWT, Volume 237

Author(s): Xia Yin, Yangbo Xiao, Jie Li, Yongqiang Pei, Yingying Shen, Xiaoyu Wang

Publication date: 1 December 2025Source: LWT, Volume 237Author(s): Xia Yin, Yangbo Xiao, Jie Li, Yongqiang Pei, Yingying Shen, Xiaoyu Wang Read More

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