有效降噪和内容保留的神经SKCS

Z. Mbarki, E. Ben Braiek, H. Seddik, S. Tebini, A. Selmani
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引用次数: 0

摘要

图像经常被强度、照明的随机变化所破坏,或者对比度差,不能直接使用。一些研究表明,有必要减少噪声,提高图像的视觉质量。为此,已经开发了一些数学工具,例如卷积滤波器的图像滤波,例如最近由Remaki和Cheriet[1]提出的具有紧凑支持的内核(KCS)及其可分离版本(SKCS)[10]。SKCS滤波器在平滑操作中的有效性取决于尺度参数的值。此外,如果尺度参数增加,图像将被模糊,细节和边界将被去除。这个缺点与KCS内核的静态特性有关。本文提出了一种基于神经网络的动态自适应SKCS滤波器。滤波过程中涉及的尺度参数实时计算,并由神经网络监督。为了检测和清除图像中的噪声区域,滤波尺度连续变化。为了评估发展的理论,提出了一个滤波噪声图像的应用,包括对静态SKCS和自适应SKCS核所得到的结果进行定性比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural SKCS for efficient noise reduction and content preserving
Images are often corrupted by random variations in intensity, illumination or have poor contrast and can't be used directly. Several studies have expressed the need to reduce noise and to improve the visual quality of the image. For this purpose, several mathematical tools have been developed such as image filtering by a convolution filter, such as the kernel with compact support (KCS) which has been recently proposed by Remaki and Cheriet [1] and it's version separable (SKCS) 10]. The effectiveness of the SKCS filter in the smoothing operation depends on the value of the scale parameter. Moreover, if the scale parameter is increased, the image is blurred and details and borders are removed. This disadvantage is related to the static nature of the KCS kernel. In this paper we propose a dynamic and adaptive SKCS filter based on neural networks. The scale parameters involved in the filtering process are calculated in real time and supervised by the neural network. The filter scale varies continuously in order to detect and clean noisy areas of the image. To assess the developed theory, an application of filtering noisy images is presented, including a qualitative comparison between the result obtained by the static SKCS and the adaptive SKCS kernel proposed.
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