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Mobile phone recognition method based on bilinear convolutional neural network 被引量:2
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作者 HAN HongGui ZHEN Qi +2 位作者 YANG HongYan DU YongPing QIAO JunFei 《Science China(Technological Sciences)》 SCIE EI CAS CSCD 2021年第11期2477-2484,共8页
Model recognition of second-hand mobile phones has been considered as an essential process to improve the efficiency of phone recycling. However, due to the diversity of mobile phone appearances, it is difficult to re... Model recognition of second-hand mobile phones has been considered as an essential process to improve the efficiency of phone recycling. However, due to the diversity of mobile phone appearances, it is difficult to realize accurate recognition. To solve this problem, a mobile phone recognition method based on bilinear-convolutional neural network(B-CNN) is proposed in this paper.First, a feature extraction model, based on B-CNN, is designed to adaptively extract local features from the images of secondhand mobile phones. Second, a joint loss function, constructed by center distance and softmax, is developed to reduce the interclass feature distance during the training process. Third, a parameter downscaling method, derived from the kernel discriminant analysis algorithm, is introduced to eliminate redundant features in B-CNN. Finally, the experimental results demonstrate that the B-CNN method can achieve higher accuracy than some existing methods. 展开更多
关键词 bilinear convolutional neural network low-rank decomposition joint loss fine-grained image recognition
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