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首页> 外文期刊>Expert systems with applications >Domain-independent severely noisy image segmentation via adaptive wavelet shrinkage using particle swarm optimization and fuzzy C-means
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Domain-independent severely noisy image segmentation via adaptive wavelet shrinkage using particle swarm optimization and fuzzy C-means

机译:通过使用粒子群优化和模糊C-Meance的自适应小波收缩通过自适应小波收缩的域独立严重嘈杂的图像分割

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摘要

Noisy image segmentation is a hot topic in natural, medical, and remote sensing image processing. It is among the non-trivial problems of computer vision having to address denoising and segmentation at the same time. Fuzzy C-means (FCM) is a clustering algorithm that has been shown to be effective at dealing with both segmentation-oriented denoising and segmentation at the same time. Moreover, with a high level of noise and other imaging artifacts, FCM loses its ability to perform image segmentation effectively. This paper introduces a Particle Swarm Optimization (PSO)-based feature enhancement approach in the wavelet domain for noisy image segmentation. This approach applies adaptive wavelet shrinkage using FCM clustering performance as an evaluation mechanism and also as the segmentation algorithm. The PSO-based process helps to enhance intensity features for clustering-based denoising, and also provides adaptivity for the system that performs well on a range of real, synthetic, and simulated noisy images with different noise levels and range/spatial properties. Furthermore, the algorithm applies edge enhancement based on Canny edge detector in order to further improve accuracy. Experiments are presented using three different datasets each degraded with different types of common noise. The presented algorithms show effective and consistent performance over a range of severe noise levels without the need for any parameter tuning. (C) 2019 Elsevier Ltd. All rights reserved.
机译:嘈杂的图像分割是天然,医疗和遥感图像处理中的热门话题。它是计算机愿景的非琐碎问题,必须同时解决去噪和分割。模糊C-means(FCM)是一种聚类算法,该算法已被证明可以在处理两种导向的去噪和分割时有效。此外,通过高水平的噪声和其他成像伪影,FCM损失其能够有效地执行图像分割的能力。本文介绍了对小波域的粒子群优化(PSO)的特征增强方法,用于嘈杂的图像分割。该方法使用FCM聚类性能作为评估机制应用自适应小波收缩,也可以作为分割算法。基于PSO的过程有助于增强基于聚类的去噪的强度特征,并且还提供对在具有不同噪声水平和范围/空间属性的实际,合成和模拟噪声图像范围内执行良好的系统的适应性。此外,该算法基于Canny Edge检测器应用边缘增强,以进一步提高精度。使用三种不同的数据集来提出实验,每个数据集都以不同类型的常见噪声劣化。呈现的算法在无需任何参数调谐的情况下显示出在一系列严重噪声水平范围内的有效和一致性。 (c)2019 Elsevier Ltd.保留所有权利。

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