2022
DOI: 10.1109/access.2022.3169159
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Improved Residual Network for Automatic Classification Grading of Lettuce Freshness

Abstract: To solve the problem of the low efficiency of traditional lettuce freshness classification methods and sample damage, we proposed an automatic lettuce freshness classification method based on improved deep residuals convolutional neural network (Im-ResNet). We built an image acquisition system to obtain the freshness classification dataset of lettuce leaves. For improving the classification accuracy, we developed an image acquisition system for curating the freshness of lettuce leaves. Then, we proposed a nove… Show more

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Cited by 6 publications
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“…RReLU is a variant of Leaky ReLU [ 42 ]. In RReLU, the slope of the negative values is random in training and becomes fixed in testing.…”
Section: Experimental Partmentioning
confidence: 99%
“…RReLU is a variant of Leaky ReLU [ 42 ]. In RReLU, the slope of the negative values is random in training and becomes fixed in testing.…”
Section: Experimental Partmentioning
confidence: 99%