首页 /研究 /A novel CapsNet neural network based on MobileNetV2 structure for robot image classification
LEARNING

A novel CapsNet neural network based on MobileNetV2 structure for robot image classification

Jingsi Zhang, Xiaosheng Yu, Xiaoliang Lei, Chengdong Wu

发表年份
2022
引用次数
8
访问权限
开放获取

摘要

Image classification indicates that it classifies the images into a certain category according to the information in the image. Therefore, extracting image feature information is an important research content in image classification. Traditional image classification mainly uses machine learning methods to extract features. With the continuous development of deep learning, various deep learning algorithms are gradually applied to image classification. However, traditional deep learning-based image classification methods have low classification efficiency and long convergence time. The training networks are prone to over-fitting. In this paper, we present a novel CapsNet neural network based on the MobileNetV2 structure for robot image classification. Aiming at the problem that the lightweight network will sacrifice classification accuracy, the MobileNetV2 is taken as the base network architecture. CapsNet is improved by optimizing the dynamic routing algorithm to generate the feature graph. The attention module is introduced to increase the weight of the saliency feature graph learned by the convolutional layer to improve its classification accuracy. The parallel input of spatial information and channel information reduces the computation and complexity of network. Finally, the experiments are carried out in CIFAR-100 dataset. The results show that the proposed model is superior to other robot image classification models in terms of classification accuracy and robustness.

关键词

Computer scienceArtificial intelligenceContextual image classificationConvolutional neural networkPattern recognition (psychology)Robustness (evolution)Deep learningFeature extractionFeature (linguistics)Artificial neural network

相关论文

查看 LEARNING 分类全部论文