基于水平集法的改进核模糊自适应阈值算法用于图像分割

T. Saikumar, S. Amit, Y. Dinesh
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引用次数: 1

摘要

采用阈值分割法分割图像时,由于背景粗糙,固定阈值是不合适的,本文提出了一种基于水平集理论的自适应阈值分割方法。该方法只需要选择一个参数,就可以从原始图像中自动找到自适应阈值曲面。一种采用自适应跟踪和形态滤波的自适应阈值方案。采用改进的核模糊c均值(IKFCM)算法生成初始轮廓曲线,克服了曲线传播过程中边界处的泄漏问题。IKFCM算法计算每个像素的模糊隶属度值。在IKFCM的基础上,重新定义了边缘指示函数。在预分割的基础上,利用图像的边缘指示函数提取目标的边界。因此,该方法具有较高的计算效率。该方法可以很好地同时检测大小图像。对于局部对比度较低的图像,也能有效地去噪和增强响应。通过图像实验验证了该算法的有效性和准确性。上述分割过程在水平集函数的演化上有了较大的改进。
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IMPROVED KERNEL FUZZY ADAPTIVE THRESHOLD ALGORITHM ON LEVEL SET METHOD FOR IMAGE SEGMENTATION
Using thresholding method to segment an image, a fixed threshold is not suitable if the background is rough Here, we propose a new adaptive thresholding method using level set theory. The method requires only one parameter to be selected and the adaptive threshold surface can be found automatically from the original image. An adaptive thresholding scheme using adaptive tracking and morphological filtering. The Improved Kernel fuzzy c-means (IKFCM) was used to generate an initial contour curve which overcomes leaking at the boundary during the curve propagation. IKFCM algorithm computes the fuzzy membership values for each pixel. On the basis of IKFCM the edge indicator function was redefined. Using the edge indicator function of a image was performed to extract the boundaries of objects on the basis of the presegmentation. Therefore, the proposed method is computationally efficient. Our method is good for detecting large and small images concurrently. It is also efficient to denoise and enhance the responses of images with low local contrast can be detected. The efficiency and accuracy of the algorithm is demonstrated by the experiments on the images. The above process of segmentation showed a considerable improvement in the evolution of the level set function.
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来源期刊
International Journal of Communication Networks and Information Security
International Journal of Communication Networks and Information Security Computer Science-Computer Networks and Communications
CiteScore
3.30
自引率
0.00%
发文量
171
期刊介绍: International Journal of Communication Networks and Information Security (IJCNIS) is a scholarly peer reviewed international scientific journal published three times (April, August, December) in a year, focusing on theories, methods, and applications in networks and information security. It provides a challenging forum for researchers, industrial professionals, engineers, managers, and policy makers working in the field to contribute and disseminate innovative new work on networks and information security.
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