4 research outputs found

    Segmentation-Driven Tomographic Reconstruction.

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    Super-resolution:A comprehensive survey

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    A Computer Vision Story on Video Sequences::From Face Detection to Face Super- Resolution using Face Quality Assessment

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    DIRECTIONALLY ADAPTIVE SUPER-RESOLUTION

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    In this paper a novel direction adaptive super-resolution (SR) image reconstruction method is proposed. The proposed maximum a-posteriori (MAP) based estimator uses gradient direction for optimal noise reduction while preserving the edges. Compared to the other edge-preserving methods, the proposed algorithm uses gradient direction in addition to the gradient amplitude for optimum regularization. The method comprises a gradient amplitude and direction estimation stage where a gradient direction map is obtained. This map guides the SR reconstruction stage through iterations. Three variations of the proposed method are compared against other edge-preserving super resolution methods. PSNR (Peak signal-to-noise-ratio), SSIM (Structural similarity index measure) values, and illustrations show that the proposed method has better performance especially on image pixel values where a strong gradient is present
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