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Super-resolution Imaging of Neuronal Dense-core Vesicles
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Lightweight local and global granularity selection optimization network for single image super-resolution.

Zhihao Peng1, Mang Hu2, Xinyuan Qi2

  • 1School of Computer Science,China University of Geosciences, Wuhan, 430074, China; Engineering Research Center of Natural Resource Information Management and Digital Twin Engineering Software, Ministry of Education, Wuhan, 430074, China.

Neural Networks : the Official Journal of the International Neural Network Society
|September 12, 2025
PubMed
Summary

A new lightweight network, LGGSONet, improves single image super-resolution (SISR) by optimizing local and global feature extraction. This network enhances reconstruction quality with fewer parameters and computational costs.

Keywords:
Global attention learningLightweightLocal multi-scale learningSuper-resolutionTransformer structure

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Area of Science:

  • Computer Vision
  • Deep Learning
  • Image Processing

Background:

  • Single Image Super-Resolution (SISR) models benefit from combining local and global features.
  • Existing methods often use linear fusion for local features, causing redundancy and inefficient extraction.
  • Global feature extraction is hindered by irrelevant features, impacting dependency capture and reconstruction quality.

Purpose of the Study:

  • To propose a lightweight network, LGGSONet, for enhanced feature extraction in SISR.
  • To improve the efficiency and effectiveness of both local and global granularity feature processing.
  • To enhance the overall reconstruction quality of SISR models.

Main Methods:

  • Introduced a Local Granularity Selection Module (LGSM) using nonlinear convolution for dynamic multi-scale feature fusion.
  • Developed a Global Granularity Optimization Module (GGOM) employing global transposed attention to filter irrelevant features.
  • Integrated LGSM and GGOM into a Mixed Granularity Transformer Block (MGTB) and a Mixed Granularity Residual Transformer Group (MGRTG) for simplified network training.

Main Results:

  • LGGSONet achieved a 0.30 dB PSNR improvement over advanced lightweight methods.
  • The proposed network maintains fewer parameters and lower computational costs.
  • Experimental results validate the effectiveness of LGGSONet in SISR tasks.

Conclusions:

  • LGGSONet effectively addresses the limitations of linear feature fusion and irrelevant feature interference in SISR.
  • The proposed network offers a lightweight and efficient solution for high-quality image super-resolution.
  • The novel modules (LGSM, GGOM) and architecture (MGTB, MGRTG) significantly advance SISR capabilities.