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基于快速高斯核函数模糊聚类算法的图像分割 被引量:1
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作者 邹立颖 郝冰 沙丽娟 《化工自动化及仪表》 CAS 北大核心 2010年第11期81-84,共4页
对模糊聚类算法通过引入高斯核函数,平滑图像像素灰度值,从而增强图像分割的抗干扰能力和鲁棒性,并结合阈值模糊聚类算法,提高了图像分割的速度。首先利用阈值模糊聚类法划分初始输入空间,得到模糊规则数及初始聚类中心;然后用高斯核函... 对模糊聚类算法通过引入高斯核函数,平滑图像像素灰度值,从而增强图像分割的抗干扰能力和鲁棒性,并结合阈值模糊聚类算法,提高了图像分割的速度。首先利用阈值模糊聚类法划分初始输入空间,得到模糊规则数及初始聚类中心;然后用高斯核函数平滑图像的像素灰度值;最后用标准模糊聚类算法求解并优化模糊隶属度和聚类中心。将本算法应用于添加噪声的嫦娥一号采集的月球地面灰度图像和Lena灰度图像进行图像分割,仿真结果验证了本方法的鲁棒性、有效性和实用性。 展开更多
关键词 高斯核函数 阈值模糊聚类 标准模糊算法 图像分割
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Response of fuzzy clustering on different threshold determination algorithms in spectral change vector analysis over Western Himalaya, India 被引量:2
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作者 SINGH Sartajvir TALWAR Rajneesh 《Journal of Mountain Science》 SCIE CSCD 2017年第7期1391-1404,共14页
Abstract: Change detection is a standard tool to extract and analyze the earth's surface features from remotely sensed data. Among the different change detection techniques, change vector analysis (CVA) have an ex... Abstract: Change detection is a standard tool to extract and analyze the earth's surface features from remotely sensed data. Among the different change detection techniques, change vector analysis (CVA) have an exceptional advantage of discriminating change in terms of change magnitude and vector direction from multispectral bands. The estimation of precise threshold is one of the most crucial task in CVA to separate the change pixels from unchanged pixels because overall assessment of change detection method is highly dependent on selected threshold value. In recent years, integration of fuzzy clustering and remotely sensed data have become appropriate and realistic choice for change detection applications. The novelty of the proposed model lies within use of fuzzy maximum likelihood classification (FMLC) as fuzzy clustering in CVA. The FMLC based CVA is implemented using diverse threshold determination algorithms such as double-window flexible pace search (DFPS), interactive trial and error (T&E), and 3x3-pixel kernel window (PKW). Unlike existing CVA techniques, addition of fuzzy clustering in CVA permits each pixel to have multiple class categories and offers ease in threshold determination process. In present work, the comparative analysis has highlighted the performance of FMLC based CVA overimproved SCVA both in terms of accuracy assessment and operational complexity. Among all the examined threshold searching algorithms, FMLC based CVA using DFPS algorithm is found to be the most efficient method. 展开更多
关键词 Change vector analysis (CVA) Fuzzymaximum likelihood classification (FMLC) Double-window flexible pace search (DFPS) Interactive trialand error (T&E) Pixel kernel window (PKW)
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