Enhancing the Spatial Resolution of Stereo Images Using a Parallax Prior

We present a novel method that can enhance the spatial resolution of stereo images using a parallax prior. While traditional stereo imaging has focused on estimating depth from stereo images, our method utilizes stereo images to enhance spatial resolution instead of estimating disparity. The critical challenge for enhancing spatial resolution from stereo images: how to register corresponding pixels with subpixel accuracy. Since disparity in traditional stereo imaging is calculated per pixel, it is directly inappropriate for enhancing spatial resolution. We, therefore, learn a parallax prior from stereo image datasets by jointly training two-stage networks. The first network learns how to enhance the spatial resolution of stereo images in luminance, and the second network learns how to reconstruct a high-resolution color image from high-resolution luminance and chrominance of the input image. Our two-stage joint network enhances the spatial resolution of stereo images significantly more than single-image super-resolution methods. The proposed method is directly applicable to any stereo depth imaging methods, enabling us to enhance the spatial resolution of stereo images.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Benchmark
Stereo Image Super-Resolution Flickr1024 - 2x upscaling StereoSR PSNR 25.96 # 7
Stereo Image Super-Resolution Flickr1024 - 4x upscaling StereoSR PSNR 21.70 # 7
Stereo Image Super-Resolution KITTI2012 - 2x upscaling StereoSR PSNR 29.51 # 4
Stereo Image Super-Resolution KITTI2012 - 4x upscaling StereoSR PSNR 24.53 # 7
Stereo Image Super-Resolution KITTI2015 - 2x upscaling StereoSR PSNR 29.33 # 7
Stereo Image Super-Resolution KITTI2015 - 4x upscaling StereoSR PSNR 24.21 # 7
Stereo Image Super-Resolution Middlebury - 2x upscaling StereoSR PSNR 34.90 # 5
Stereo Image Super-Resolution Middlebury - 4x upscaling StereoSR PSNR 27.64 # 7

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