An overview of intelligent image segmentation using active contour models

Yiyang Chen, Pengqiang Ge, Guina Wang, G. Weng, Hongtian Chen
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引用次数: 12

Abstract

The active contour model (ACM) approach in image segmentation is regarded as a research hotspot in the area of computer vision, which is widely applied in different kinds of applications in practice, such as medical image processing. The essence of ACM is to make use ofuse an enclosed and smooth curve to signify the target boundary, which is usually accomplished by minimizing the associated energy function by means ofthrough the standard descent method. This paper presents an overview of ACMs for handling image segmentation problems in various fields. It begins with an introduction briefly reviewing different ACMs with their pros and cons. Then, some basic knowledge in of the theory of ACMs is explained, and several popular ACMs in terms of three categories, including region-based ACMs, edge-based ACMs, and hybrid ACMs, are detailedly reviewed with their advantages and disadvantages. After that, twelve ACMs are chosen from the literature to conduct three sets of segmentation experiments to segment different kinds of images, and compare the segmentation efficiency and accuracy with different methods. Next, two deep learning-based algorithms are implemented to segment different types of images to compare segmentation results with several ACMs. Experimental results confirm some useful conclusions about their sharing strengths and weaknesses. Lastly, this paper points out some promising research directions that need to be further studied in the future.
基于活动轮廓模型的智能图像分割综述
主动轮廓模型(ACM)图像分割方法是计算机视觉领域的一个研究热点,在医学图像处理等实际应用中得到了广泛的应用。ACM的本质是利用一条封闭的光滑曲线来表示目标边界,通常通过标准下降法最小化相关的能量函数来实现。本文综述了在各个领域中用于处理图像分割问题的ACMs。首先简要介绍了不同的acm及其优缺点。然后,解释了acm理论的一些基本知识,并详细介绍了几种流行的acm,包括基于区域的acm,基于边缘的acm和混合acm,以及它们的优缺点。然后,从文献中选取12台acm进行3组分割实验,对不同类型的图像进行分割,比较不同方法的分割效率和准确率。接下来,实现了两种基于深度学习的算法来分割不同类型的图像,并将分割结果与几种acm进行比较。实验结果证实了它们的共同优点和缺点的一些有益结论。最后,本文指出了今后需要进一步研究的一些有前景的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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