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Seventy\u2010eight features acquired with the multispectral images were extracted from individual eggplant seeds, which were then classified using SVM and a one\u2010dimensional convolutional neural network (1D\u2010CNN), and the overall accuracy was 90.12% and 94.80%, respectively. A two\u2010dimensional convolutional neural network (2D\u2010CNN) was also adopted for discrimination of seed varieties, and an accuracy of 90.67% was achieved. 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