1. IremulbNet: Rethinking the inverted residual architecture for image recognition.
- Author
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Su, Tiantian, Liu, Anan, Shi, Yongran, and Zhang, Xiaofeng
- Subjects
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IMAGE recognition (Computer vision) , *ARTIFICIAL neural networks , *CONVOLUTIONAL neural networks , *IMAGE databases , *FEATURE extraction , *NETWORK performance , *GRAPHICS processing units - Abstract
An increasing need of running Convolutional Neural Network (CNN) models on mobile devices encourages the studies on efficient and lightweight neural network model. In this paper, an Inverse Residual Multi-Branch Network named IremulbNet is proposed to solve the problem of insufficient classification accuracy in existing lightweight network models. The core module of this model is to reconstruct an inverse residual structure, in which a special feature fusion method, multi-branch feature extraction, and depthwise separable convolution techniques are used to improve the classification accuracy. The performance of model is tested using image databases. Experimental results show that for the fine-grained image dataset Imagenet-woof, IremulbNet achieved 10.9%, 12.2%, and 15.3% higher accuracy than that of MobileNet V3, ShuffleNet V2, and PeleeNet, respectively. Moreover, it can reduce inference time (GPU) about 42.09% and 75.56% compared to classic ResNet50 and DenseNet121. • A lightweight IremulbNet is proposed to achieve high accuracy image recognition with a small number of parameters and operations. • A special feature fusion method, multi-branch feature extraction, and depthwise separable convolution are used to improve the performance of the network. • A significant improvement in recognition accuracy can be obtained in image classification tasks with low computation load. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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