一种基于改进活动轮廓模型的噪声图像分割方法

Yinlong Wang, Zhongchun Wang, Z. Xie
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引用次数: 0

摘要

利用活动轮廓模型分割图像是一种经典的图像分割方法。但是这种方法的效果并不好。现有的活动轮廓模型对噪声敏感,难以实现弱边界图像的精确分割。提出了一种基于梯度矢量流活动轮廓模型的图像分割算法。首先,利用小波变换对分割后的图像进行处理,解决噪声对图像分割的干扰;然后,利用梯度矢量流主动轮廓模型对去噪图像进行分割,拟合图像中不同区域的轮廓曲线演化过程,从而实现对不同区域的分割。仿真结果表明,与现有的其他图像分割算法相比,梯度矢量流活动轮廓模型能够以较高的精度分割图像,并且大大缩短了分割时间,提高了抗噪能力。该算法的整体性能明显优于其他图像分割算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Noisy Image Segmentation Method Based on Improved Active Contour Model
Using active contour model to segment image is a classical image segmentation method. But the effect of this method is not good. The current active contour model is sensitive to noise, and it is difficult to achieve accurate segmentation of weak boundary image. This paper proposes an image segmentation algorithm based on gradient vector flow active contour model. Firstly, the wavelet transform is used to process the segmented image to solve the interference of noise on image segmentation. Then, the gradient vector flow active contour model is used to segment the denoised image to fit the contour curve evolution process of different regions in the image, so as to realize the segmentation of different regions. Compared with other current image segmentation algorithms, the simulation results show that the gradient vector flow active contour model can segment the image with high accuracy, and the segmentation time is greatly reduced, and the anti-noise ability is improved. The overall performance of the algorithm is obviously better than other image segmentation algorithms.
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