Rapid and nondestructive detection of freshness quality of postharvest spinaches based on machine vision and electronic nose
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Mengzi Wu | Xiaorui Zhang | Shanshan Yu | Ernest Bonah | Mei Ma | Joshua Harrington Aheto | Xingyi Huang | Haixia Xu | Joshua H. Aheto | Mei Ma | Shanshan Yu | Haixia Xu | Mengzi Wu | Xiaorui Zhang
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