Exemplar-Based Image Inpainting with Collaborative Filtering

Xinran Wu, Wei Zeng, Zhenzhou Li
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引用次数: 6

Abstract

This paper proposes a novel patch synthesis approach for exemplar-based propagation in image in painting. Currently, plural non-local exemplar patches synthesis is widely adopted to fill missing pixels. It generally provides good results, but sometimes shows poor visual quality due to dissimilarity between exemplars and targets. In this paper, a collaborative filtering approach is used to enhance the exemplar-based propagation to obtain ideal in painting results. The approach works on pixel level information, while many exemplar-based propagation algorithms focus on patch level information. Object removal and stain image recovering are carried out to evaluate the proposed approach. Experiments show that our approach provides good visual quality in object removal and high PSNR in stain image recovering.
基于范例的图像绘制与协同过滤
本文提出了一种新的基于样本的绘画图像传播补丁合成方法。目前广泛采用复数非局部样块合成来填补缺失像素。它通常提供良好的结果,但有时由于示例和目标之间的不相似性而显示较差的视觉质量。本文采用协同滤波的方法增强基于样本的传播,以获得理想的绘画效果。该方法适用于像素级信息,而许多基于示例的传播算法侧重于补丁级信息。通过目标去除和污点图像恢复对该方法进行了评价。实验表明,该方法在目标去除方面具有良好的视觉质量,在污点图像恢复方面具有较高的PSNR。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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