增强消除红眼的灰色代码

S. Battiato, G. Farinella, M. Guarnera, G. Messina, D. Ravì
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引用次数: 7

摘要

随着数码相机和内置摄像头和闪光灯的移动设备的大量普及,红眼现象实际上已经成为一个关键问题。本文描述的技术利用三个主要步骤来识别和消除红眼。首先,利用图像滤波管道从输入图像中提取红眼候选图像。然后对聚类斑块空间中提取的灰度码特征学习一组分类器,用于区分眼睛和非眼睛斑块。一旦检测到红眼,通过去饱和度和亮度降低来去除伪影。该方法已在大型图像数据集上进行了测试,在命中率最大化、误报减少和质量度量方面取得了有效的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Boosting Gray Codes for Red Eyes Removal
Since the large diffusion of digital camera and mobile devices with embedded camera and flashgun, the red-eyes artifacts have de-facto become a critical problem. The technique herein described makes use of three main steps to identify and remove red-eyes. First, red eyes candidates are extracted from the input image by using an image filtering pipeline. A set of classifiers is then learned on gray code features extracted in the clustered patches space, and hence employed to distinguish between eyes and non-eyes patches. Once red-eyes are detected, artifacts are removed through desaturation and brightness reduction. The proposed method has been tested on large dataset of images achieving effective results in terms of hit rates maximization, false positives reduction and quality measure.
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