随机共振辅助鲁棒医学超声图像分割技术

J. V. Sagar, C. Bhagvati
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引用次数: 0

摘要

随机共振的存在已经在物理、生物和地质系统中得到证明,它可以增强弱信号,使其可被探测到。在有噪声的图像中,狭窄的区域、小的特征和低对比度或微妙的边缘对应于这样的弱信号。本文从数学和经验两方面论证了随机共振在这些特征的检测、提取和分析中的发生和利用。仿真研究证实了数学结果。最后,对医学超声图像的研究结果表明,随机共振可以恢复由于平均移位滤波器等鲁棒技术而丢失的一些细微特征。这些结果再次证实了数学和模拟结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stochastic resonance aided robust techniques for segmentation of medical ultrasound images
The existence of stochastic resonance has been demonstrated in physical, biological and geological systems for boosting weak signals to make them detectable. Narrow regions, small features and low-contrast or subtle edges, in noisy images, correspond to such weak signals. In this paper, the occurrence and exploitation of stochastic resonance in the detection, extraction and analysis of such features is demonstrated both mathematically and empirically. The mathematical results are confirmed by simulation studies. Finally, results on medical ultrasound images demonstrate that several subtle features lost by the application of robust techniques such as mean shift filter are recovered by stochastic resonance. These results reconfirm the mathematical and simulation findings.
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