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A neural network-based stochastic active contour model (NNS-SNAKE) for contour finding of distinct features

机译:基于神经网络的随机主动轮廓模型(NNS-SNAKE),用于寻找不同特征的轮廓

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摘要

Contour finding of distinct features in 2-D/3-D images is essential for image analysis and computer vision. To overcome the potential problems associated with existing contour finding algorithms, we propose a framework, called the neural network-based stochastic active contour model (NNS-SNAKE), which integrates a neural network classifier for systematic knowledge building, an active contour model (also known as the "Snake") for automated contour finding using energy functions, and the Gibbs sampler to help the snake to find the most probable contour using a stochastic decision mechanism. Successful application of the NNS-SNAKE to extraction of several types of contours on magnetic resonance (MR) images is presented.
机译:在2-D / 3-D图像中发现不同特征的轮廓对于图像分析和计算机视觉至关重要。为了克服与现有轮廓发现算法相关的潜在问题,我们提出了一个名为基于神经网络的随机活动轮廓模型(NNS-SNAKE)的框架,该框架集成了用于系统知识构建的神经网络分类器,活动轮廓模型(也称为“蛇”),利用能量函数自动进行轮廓查找,吉布斯采样器则利用随机决策机制帮助蛇查找最可能的轮廓。介绍了NNS-SNAKE在磁共振(MR)图像上提取几种类型的轮廓的成功应用。

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