用于增加灰度和彩色图像细节的自适应高升压滤波

Yaowamal Raphiphan, Suppakun Wattanakaroon, Suphongsa Khetkeeree
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引用次数: 1

摘要

一般来说,高升压滤波往往会产生很多令人不快的噪声,特别是平坦区域。此外,在应用于彩色图像时,还会产生边缘区域的颜色失真。本文提出了一种基于高升压滤波的自适应锐化滤波器,以增加图像的细节。该滤波器由原始滤波器和高频滤波器(HC)两部分组成。采用非线性组合构建的自适应权矩阵对HC部分进行控制。采用拉普拉斯算子作为高通滤波器生成自适应权重矩阵和自适应权重矩阵。用模拟阶跃边缘图像、灰度图像和彩色图像来观察滤波器的性能。比较滤波器采用传统的双边滤波器和高升压滤波器。实验结果表明,该滤波器在提高边缘清晰度的同时,不会增强平坦区域的噪声。此外,它还减少了应用于彩色图像时的颜色失真和边缘响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive High Boost Filtering for Increasing Grayscale and Color Image Details
Generally, the high boost filtering often produced a lot of unpleasant noise, especially the flat area. Moreover, it also gives color distortion in the edge regions when applied for the color image. In this paper, we propose the adaptive sharpening filter based on the high boost filtering for increasing the image details. This filter consists of two parts as the original and the High-frequency Component (HC) parts. The HC part was controlled by using the adaptive weight matrix, which was constructed from the non-linear combination. The Laplacian operator was employed as the high-pass filter for generating both the HC and the adaptive weight matrix. The simulated step-edge image, grayscale images, and color images were applied for observing our filter performance. The traditional bilateral filter and high boost filter are used as the comparison filters. The experimental results show that our proposed filter can increase the edge sharpness while it did not enhance the unpleasant noise for the flat area. Moreover, it also reduces the color distortion and edge ringing when applied to the color images.
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