数字图像模糊最优阈值多尺度形态分割

K. Nallaperumal, Krishnaveni K, J. Varghese, S. Saudia, R. K. Selvakumar, Ravi Subban, Jennifer J Ranjani
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引用次数: 10

摘要

提出了一种新的基于模糊的多尺度形态分割方法。即使在脉冲干扰的环境下,该技术也能很好地处理含有不同尺度明暗特征的灰度图像。分割算法包括三个步骤。在第一步中,使用迭代自适应切换中值滤波器对图像进行预处理,以减少导致过度分割的脉冲的影响。在第二步中,通过对预处理后的图像分别打开和关闭,提取不同目标的多尺度明暗特征。利用模糊高斯测度得到的最优阈值对所得图像进行二值化。对于结构元素的多个尺度重复此过程,直到提取出所有特征。最后,检测亮顶帽和暗底帽图像的有效片段,并将这些图像的轮廓组合在一起,得到最终的分割图像。在一组测试图像上实现了该算法,客观上和主观上都证明了该算法的性能优于标准方法。该分割技术还解决了分割过度和分割不足的问题
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy optimal thresholded multiscale morphological segmentation of digital images
A new fuzzy based multiscale morphological segmentation is proposed in this paper. The technique works satisfactorily on gray scale images containing bright and dark features of various scales even in an impulse corrupted environment. The segmentation algorithm involves three passes. In the first pass, the image is preprocessed by using an iterative adaptive switching median filter which reduces the impact of impulse that causes over segmentation. In the second pass the multiple scales of bright and dark features of different objects are extracted by the respective opening and closing of the preprocessed image. The resultant image is binarized using an optimum threshold, obtained by the fuzzy Gaussian measure. The process is repeated for multiple scales of the structuring element until all the features are extracted. In the last pass, valid segments of the bright top-hat and dark bottom-hat images are detected and the contours of these images are combined to give the final segmented image. The scheme is implemented on a set of test images and the performance of the algorithm is proved better both objectively and subjectively than the standard methods. The problems of over segmentation and under segmentation are also addressed by the proposed segmentation technique
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