基于直方图的卫星图像感兴趣区域分割的爬坡优化

P. Ganesan, V. Kalist, B. Sathish
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引用次数: 6

摘要

从卫星接收到的图像包含大量需要处理和分析的信息。因此,分割是图像分析中一个至关重要的步骤,可以从卫星图像中获取必要的信息。该方法采用爬坡局部优化技术和改进的k-means聚类算法对卫星图像进行分割。该方法将RGB色彩空间中的卫星图像转换为CIELAB色彩空间。这种色彩空间旨在近似人类的视觉和感知统一。此外,这个色彩空间的强度(L)分量与人类对亮度的感知完全匹配。下一步,对CIELAB色彩空间图像的颜色直方图进行爬坡处理,得到初始聚类中心。最后一步,将这些聚类中心交给k-means聚类算法,生成分割后的图像作为输出。大量的实验证明了该方法的有效性。与其他传统方法相比,该方法在分割卫星图像以获得有意义的聚类方面更加有效和高效。
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Histogram based hill climbing optimization for the segmentation of region of interest in satellite images
Images received from the satellite contains huge amount of information to process and analyze. So the segmentation is a crucial and important procedure in the analysis of images to gather necessary information from the satellite images. In the proposed approach, the satellite images are segmented using hill climbing local optimization technique and modified k-means clustering algorithm. In this approach, satellite images in RGB color space is converted into CIELAB color space. This color space is intended to approximate vision of human and perceptually uniform. Moreover, the intensity (L) component of this color space exactly matches the human perception of lightness. In the next step, the hill climbing process is applied on the color histogram of CIELAB color space image to obtain the initial cluster centers. In the final step, these cluster centers are given to the k-means clustering algorithm to produce the segmented image as the output. The effectiveness of the proposed approach has been demonstrated by number of experiments. The proposed method is more effective and efficient in the segmentation of satellite images to obtain meaningful clusters as compared to other conventional methods.
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