1. 基于特征融合和注意力机制的图像超分辨率模型.
- Author
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盘展鸿, 朱鉴, 迟小羽, 蔡瑞初, and 陈炳丰
- Subjects
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FEATURE extraction , *HIGH resolution imaging , *DEEP learning , *PROBLEM solving , *MACHINE learning - Abstract
Existing deep learning based single image super-resolution (SISR) models usually improve the fitting ability of the model by increasing the number of network layers, but fail to fully extract and reuse features, leading low quality of reconstructed images. To solve this problem, this paper proposed an image super-resolution model based on feature fusion and attention mechanism. This model used residual in residual (RIR) structure in feature extraction module. The feature extraction module of the network consisted of several residual groups. Each residual group consisted of several residual blocks. This module implemented local feature fusion in each residual group and global feature fusion between each group. In addition, this model introduced coordinate attention module into each residual block and spatial attention module into each residual group. It verifies that the model is able to fully extract features and reuse features. The final experimental results show that the model is superior to the existing models in objective evaluation indexes and subjective visual effect. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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