Multilevel filtering image denoising algorithm based on edge information fusion

Xin Zhang, Jianfeng Sun, Peng Jiang, Xin Zhou, Changrui Qiu, Yinbo Zhang, Zhang Hailong
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Abstract

Edges are critical important for the visual appearance of images. The traditional denoising algorithms are difficult to preserve the edges of the image while removing the noise of ICCD sensing image. At the same time, it is difficult to eliminate the problems of image darkness and low resolution caused by uneven illumination. This paper proposes a multilevel filtering image denoising algorithm based on edge information fusion. The target edges detection of the image after non-local means (NL-means) filtering is carried out based on the eight-direction Sobel operator. In order to filter the false edge points and residual noise, an adaptive threshold is determined according to the mean and variance of the eight neighborhood pixels of the detected pixel. Meanwhile, homomorphic filtering is used to enhance the image contrast and uniformity. By comparing the pixel values of the edge image and the homomorphic filtered image, the final denoised image is obtained by fusing the two images. The results indicate that, compared with the traditional algorithms, the edge preserving ability of the proposed algorithm is improved by more than 20%, and the denoising ability is improved by 63.5% for building target. For specific targets (vehicle), the results demonstrate that the proposed algorithm have the maximum edge preserving index and contrast, and the minimum non-uniformity. This algorithm lays a foundation for target segmentation and recognition.
基于边缘信息融合的多级滤波图像去噪算法
边缘对图像的视觉外观至关重要。传统的去噪算法难以在去除ICCD图像噪声的同时保持图像的边缘。同时,由于光照不均匀导致的图像暗化和分辨率低的问题也难以消除。提出了一种基于边缘信息融合的多级滤波图像去噪算法。基于八方向Sobel算子对非局部均值滤波后的图像进行目标边缘检测。根据检测像素的8个邻域像素的均值和方差确定自适应阈值,过滤假边缘点和残余噪声。同时,采用同态滤波增强图像对比度和均匀性。通过比较边缘图像和同态滤波图像的像素值,将两幅图像融合得到最终的去噪图像。结果表明,与传统算法相比,该算法的边缘保持能力提高了20%以上,对建筑目标的去噪能力提高了63.5%。结果表明,对于特定目标(车辆),该算法具有最大的边缘保持指数和对比度,最小的非均匀性。该算法为目标分割和识别奠定了基础。
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