数据平滑的连接技术

R. Daniel, K. Teague
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引用次数: 0

摘要

对数据进行滤波去除噪声是图像处理中的一项重要操作。虽然线性滤波器很常见,但它们有严重的缺点,因为它们不能区分大的和小的不连续。这是特别严重的,因为大的不连续经常是场景中的重要边缘。然而,如果减少平滑动作以保留大的不连续,则从数据中去除的噪声非常少。本文讨论了一个连接网络的并行实现,该网络试图平滑数据而不模糊边缘。该网络通过迭代最小化明确建模图像边缘的非线性误差度量来运行。讨论了该网络的起源及其在iPSC/2上的仿真。我们还讨论了其性能与节点数量、数据信噪比的关系,并将其性能与线性高斯滤波器和中值滤波器进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Connectionist Technique for Data Smoothing
Filtering data to remove noise is an important operation in image processing. While linear filters are common, they have serious drawbacks since they cannot discriminate between large and small discontinuities. This is especially serious since large discontinuities are frequently important edges in the scene. However, if the smoothing action is reduced to preserve the large discontinuities, very little noise will be removed from the data. This paper discusses the parallel implementation of a connectionist network that attempts to smooth data without blurring edges. The network operates by iteratively minimizing a non-linear error measure which explicitly models image edges. We discuss the origin of the network and its simulation on an iPSC/2. We also discuss its performance versus the number of nodes, the SNR of the data, and compare its performance with a linear Gaussian filter and a median filter.
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