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Automatic Differentiation of Damaged and Unharmed Grapes Using RGB Images and Convolutional Neural Networks.

, , , , , , , , и . ECCV Workshops (6), том 12540 из Lecture Notes in Computer Science, стр. 347-359. Springer, (2020)

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