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Image super-resolution reconstruction of multi-scale deep feature distillation
Information Sciences | 更新时间:2025-07-08
    • Image super-resolution reconstruction of multi-scale deep feature distillation

    • In the field of image super-resolution reconstruction, researchers have proposed the MSDFDN method, which improves image quality through multi-scale deep feature distillation and provides a new solution for super-resolution reconstruction.
    • Optics and Precision Engineering   Vol. 33, Issue 10, Pages: 1657-1671(2025)
    • DOI:10.37188/OPE.20253310.1657    

      CLC: TP391.4
    • CSTR:32169.14.OPE.20253310.1657    
    • Received:12 November 2024

      Revised:10 February 2025

      Published:25 May 2025

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  • LI Xiang,XIONG Ling,YE Daohui,et al.Image super-resolution reconstruction of multi-scale deep feature distillation[J].Optics and Precision Engineering,2025,33(10):1657-1671. DOI: 10.37188/OPE.20253310.1657. CSTR: 32169.14.OPE.20253310.1657.

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