Balanced Two-Stage Residual Networks for Image Super-Resolution.

IEEE Computer Society Conference on Computer Vision and Pattern Recognition Workshops(2017)

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摘要
In this paper, balanced two-stage residual networks (BT SRN) are proposed for single image super-resolution. The deep residual design with constrained depth achieves the optimal balance between the accuracy and the speed for super-resolving images. The experiments show that the balanced two-stage structure, together with our lightweight two-layer PConv residual block design, achieves very promising results when considering both accuracy and speed. We evaluated our models on the New Trends in Image Restoration and Enhancement workshop and challenge on image super-resolution (NTIRE SR 2017). Our final model with only 10 residual blocks ranked among the best ones in terms of not only accuracy (6th among 20 final teams) but also speed (2nd among top 6 teams in terms of accuracy).
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关键词
balanced two-stage residual networks,image super-resolution,BTSRN,deep residual design,super-resolving images,balanced two-stage structure,two-layer PConv residual block design,image restoration,enhancement workshop,NTIRE SR 2017,source code
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