Multi-component image segmentation using a hybrid dynamic genetic algorithm and fuzzy C-means

M. Awad, K. Chehdi, A. Nasri
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引用次数: 51

Abstract

Image segmentation is an important task in image analysis and processing. Many of the existing methods for segmenting a multi-component image (satellite or aerial) are very slow and require a priori knowledge of the image that could be difficult to obtain. Furthermore, the success of each of these methods depends on several factors, such as the characteristics of the acquired image, resolution limitations, intensity in-homogeneities and the percentage of imperfections induced by the process of image acquisition. Recently, fuzzy C-means (FCM) and Genetic Algorithms were separately used in segmenting multi-component images but neither of them had successfully addressed the above concerns. GA was enhanced using Hill-climbing, randomising, and modified mutation operators, leading to what is called hybrid dynamic genetic algorithm (HDGA). Coupling HDGA and FCM creates an unsupervised segmentation method which could successfully segment two types of multi-component images (Landsat ETM+, and IKONOS II). Comparison with the four different methods FCM, hybrid genetic algorithm (HGA), self-organizing-maps (SOM), and the combination of SOM and HGA (SOM-HGA) reveals that FCM-HDGA segmentation method gives robust and reliable results, and is more time efficient.
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基于混合动态遗传算法和模糊c均值的多分量图像分割
图像分割是图像分析与处理中的一项重要任务。许多现有的分割多分量图像(卫星或航空)的方法非常缓慢,并且需要对图像的先验知识,这可能很难获得。此外,每种方法的成功取决于几个因素,如获取图像的特征、分辨率限制、强度非均匀性和图像获取过程引起的缺陷百分比。近年来,模糊c均值(FCM)和遗传算法分别用于多分量图像的分割,但都没有成功地解决上述问题。利用爬坡、随机化和修改突变算子增强遗传算法,形成所谓的混合动态遗传算法(HDGA)。将HDGA与FCM相结合,实现了对Landsat ETM+和IKONOS II两种多组分图像的无监督分割,并与FCM、混合遗传算法(HGA)、自组织映射(SOM)和SOM与HGA相结合(SOM-HGA)四种方法进行了比较,结果表明FCM-HDGA分割结果鲁棒可靠,且具有更高的时间效率。
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