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Segmentation of Ovarian Ultrasound Images Using Cellular Neural Networks Trained by Support Vector Machines

机译:使用支持向量机训练的细胞神经网络对卵巢超声图像进行分割

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Various applications of cellular neural networks (CNNs) on complex image processing tasks raise questions about an appropriate selection of template elements that determine the CNN's behaviour. There are two possibilities: either to resort to the existing and published templates suitable for the problem under consideration or to construct the templates by one of well-known training methods, such as genetic algorithms, simulated annealing, etc. In this paper, a novel approach which utilizes the formalism of support vector machines (SVMs) is introduced. We found the CNN template optimisation done by this machine learning technique superior to other training methods. The learning time reduced from several hours to less than a minute. Testing our novel approach on ultrasound ovarian images, the obtained segmentation results and recognition rates for ovarian follicles were significantly better than with comparable solutions.
机译:细胞神经网络(CNN)在复杂图像处理任务上的各种应用提出了有关适当选择确定CNN行为的模板元素的问题。有两种可能性:要么求助于已考虑问题的现有和已发布模板,要么通过遗传算法,模拟退火等众所周知的训练方法之一来构建模板。介绍了一种利用支持向量机(SVM)形式主义的方法。我们发现通过这种机器学习技术完成的CNN模板优化优于其他训练方法。学习时间从几个小时减少到不到一分钟。在超声卵巢图像上测试我们的新方法,获得的卵巢卵泡分割结果和识别率明显优于同类解决方案。

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