SUN Xiaoye, MA Liyan, LI Gongyan. Multi-vision Attention Networks for on-Line Red Jujube Grading[J]. Chinese Journal of Electronics, 2019, 28(6): 1108-1117. DOI: 10.1049/cje.2019.07.014
Citation: SUN Xiaoye, MA Liyan, LI Gongyan. Multi-vision Attention Networks for on-Line Red Jujube Grading[J]. Chinese Journal of Electronics, 2019, 28(6): 1108-1117. DOI: 10.1049/cje.2019.07.014

Multi-vision Attention Networks for on-Line Red Jujube Grading

  • To solve the red jujube classification problem, this paper designs a convolutional neural network model with low computational cost and high classification accuracy. The architecture of the model is inspired by the multi-visual mechanism of the organism and DenseNet. To further improve our model, we add the attention mechanism of SE-Net. We also construct a dataset which contains 23,735 red jujube images captured by a jujube grading system. According to the appearance of the jujube and the characteristics of the grading system, the dataset is divided into four classes:invalid, rotten, wizened and normal. The numerical experiments show that the classification accuracy of our model reaches to 91.89%, which is comparable to DenseNet-121, InceptionV3, InceptionV4, and Inception-ResNet v2. Our model has real-time performance.
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