Accurate Blur Models vs. Image Priors in Single Image Super-resolution

Computer Vision(2013)

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摘要
Over the past decade, single image Super-Resolution (SR) research has focused on developing sophisticated image priors, leading to significant advances. Estimating and incorporating the blur model, that relates the high-res and low-res images, has received much less attention, however. In particular, the reconstruction constraint, namely that the blurred and down sampled high-res output should approximately equal the low-res input image, has been either ignored or applied with default fixed blur models. In this work, we examine the relative importance of the image prior and the reconstruction constraint. First, we show that an accurate reconstruction constraint combined with a simple gradient regularization achieves SR results almost as good as those of state-of-the-art algorithms with sophisticated image priors. Second, we study both empirically and theoretically the sensitivity of SR algorithms to the blur model assumed in the reconstruction constraint. We find that an accurate blur model is more important than a sophisticated image prior. Finally, using real camera data, we demonstrate that the default blur models of various SR algorithms may differ from the camera blur, typically leading to over-smoothed results. Our findings highlight the importance of accurately estimating camera blur in reconstructing raw lowers images acquired by an actual camera.
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关键词
cameras,image reconstruction,image resolution,image restoration,image sampling,SR algorithm sensitivity,blurred downsampled high-resolution output image,camera blur estimation,default blur models,empirical analysis,gradient regularization,image priors,low-resolution input image,raw low-resolution image reconstruction,reconstruction constraint,single-image SR,single-image super-resolution
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