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A SOM-based Chan–Vese model for unsupervised image segmentation

机译:一种基于SOM的CHAN-VESE模型,用于无监督的图像分割

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摘要

Active Contour Models (ACMs) constitute an efficient energy-based image segmentation framework. They usually deal with the segmentation problem as an optimization problem, formulated in terms of a suitable functional, constructed in such a way that its minimum is achieved in correspondence with a contour that is a close approximation of the actual object boundary. However, for existing ACMs, handling images that contain objects characterized by many different intensities still represents a challenge. In this paper, we propose a novel ACM that combines—in a global and unsupervised way—the advantages of the Self-Organizing Map (SOM) within the level set framework of a state-of-the-art unsupervised global ACM, the Chan–Vese (C–V) model. We term our proposed model SOM-based Chan–Vese (SOMCV) active contour model. It works by explicitly integrating the global information coming from the weights (prototypes) of the neurons in a trained SOM to help choosing whether to shrink or expand the current contour during the optimization process, which is performed in an iterative way. The proposed model can handle images that contain objects characterized by complex intensity distributions, and is at the same time robust to the additive noise. Experimental results show the high accuracy of the segmentation results obtained by the SOMCV model on several synthetic and real images, when compared to the Chan–Vese model and other image segmentation models.
机译:主动轮廓模型(ACMS)构成基于能量的图像分割框架。它们通常处理分割问题作为在合适的功能方面配制的优化问题,以这样的方式构造,即其最小与作为实际对象边界的近似近似的轮廓相对应地实现。但是,对于现有的ACM,处理包含许多不同强度的对象的图像仍然代表挑战。在本文中,我们提出了一种新的ACM,即全球和无人监督的方式 - 自组织地图(SOM)的优势在整个艺术品无监督全球ACM,CHAN的级别框架内-VESE(C-V)模型。我们术语我们提出的七种基于SOM的Chan-Vese(Somcv)有源轮廓模型。它通过显式集成来自训练扫描SOM中神经元的重量(原型)的全局信息,以帮助选择在优化过程中是否缩小或扩展当前轮廓,这以迭代方式执行。所提出的模型可以处理包含由复杂强度分布的对象的图像,并且与添加到附加噪声同时稳健。实验结果表明,与CHAN-VESE模型和其他图像分割模型相比,SOMCV模型通过SOMCV模型获得的分段结果的高精度。

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