2023
DOI: 10.1109/access.2023.3265998
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Application of X-Ray Imaging and Convolutional Neural Networks in the Prediction of Tomato Seed Viability

Abstract: Tomato fruits are consumed worldwide owing to their health benefits, taste, and flavor. In tomato cultivation, seed viability is directly related to crop productivity. Currently, the methods used to evaluate seed viability involve destructive sampling tests; accordingly, nondestructive methods for predicting seed viability are urgently required. This study aimed to develop X-ray imagery-based models capable of predicting the viability of tomato seeds. Particularly, X-ray-imaged seeds were grown to the seedling… Show more

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References 45 publications
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