CVAug 20, 2015

Improving Image Restoration with Soft-Rounding

arXiv:1508.05046v17 citations
Originality Incremental advance
AI Analysis

This work addresses image restoration for specific domains like text and barcodes, offering an incremental enhancement to existing methods.

The authors tackled the problem of restoring images with distinct pixel values (e.g., text, barcodes) by incorporating a new regularizer into a least squares framework, resulting in significant improvements in PSNR and SSIM metrics.

Several important classes of images such as text, barcode and pattern images have the property that pixels can only take a distinct subset of values. This knowledge can benefit the restoration of such images, but it has not been widely considered in current restoration methods. In this work, we describe an effective and efficient approach to incorporate the knowledge of distinct pixel values of the pristine images into the general regularized least squares restoration framework. We introduce a new regularizer that attains zero at the designated pixel values and becomes a quadratic penalty function in the intervals between them. When incorporated into the regularized least squares restoration framework, this regularizer leads to a simple and efficient step that resembles and extends the rounding operation, which we term as soft-rounding. We apply the soft-rounding enhanced solution to the restoration of binary text/barcode images and pattern images with multiple distinct pixel values. Experimental results show that soft-rounding enhanced restoration methods achieve significant improvement in both visual quality and quantitative measures (PSNR and SSIM). Furthermore, we show that this regularizer can also benefit the restoration of general natural images.

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