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Global Image Thresholding Adaptive Neuro-Fuzzy Inference System Trained with Fuzzy Inclusion and Entropy Measures

机译:基于模糊包含和熵测度的全局图像阈值自适应神经模糊推理系统

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Thresholding algorithms segment an image into two parts (foreground and background) by producing a binary version of our initial input. It is a complex procedure (due to the distinctive characteristics of each image) which often constitutes the initial step of other image processing or computer vision applications. Global techniques calculate a single threshold for the whole image while local techniques calculate a different threshold for each pixel based on specific attributes of its local area. In some of our previous work, we introduced some specific fuzzy inclusion and entropy measures which we efficiently managed to use on both global and local thresholding. The general method which we presented was an open and adaptable procedure, it was free of sensitivity or bias parameters and it involved image classification, mathematical functions, a fuzzy symmetrical triangular number and some criteria of choosing between two possible thresholds. Here, we continue this research and try to avoid all these by automatically connecting our measures with the wanted threshold using some Artificial Neural Network (ANN). Using an ANN in image segmentation is not uncommon especially in the domain of medical images. However, our proposition involves the use of an Adaptive Neuro-Fuzzy Inference System (ANFIS) which means that all we need is a proper database. It is a simple and immediate method which could provide researchers with an alternative approach to the thresholding problem considering that they probably have at their disposal some appropriate and specialized data.
机译:阈值算法通过产生初始输入的二进制版本将图像分为两部分(前景和背景)。这是一个复杂的过程(由于每个图像的独特特性),通常构成其他图像处理或计算机视觉应用程序的初始步骤。全局技术针对整个图像计算单个阈值,而局部技术则根据其局部区域的特定属性为每个像素计算不同的阈值。在我们之前的一些工作中,我们介绍了一些特定的模糊包含和熵测度,可以有效地对全局和局部阈值进行使用。我们提出的通用方法是一个开放且可调整的过程,没有灵敏度或偏差参数,并且涉及图像分类,数学函数,模糊对称三角数以及在两个可能的阈值之间进行选择的一些标准。在这里,我们继续进行这项研究,并通过使用某些人工神经网络(ANN)将我们的测量值与所需阈值自动连接起来,来避免所有这些情况。在图像分割中使用ANN并不少见,尤其是在医学图像领域。但是,我们的建议涉及使用自适应神经模糊推理系统(ANFIS),这意味着我们所需要的只是一个合适的数据库。这是一种简单而直接的方法,可以为研究人员提供阈值问题的替代方法,因为他们可能会掌握一些适当的专业数据。

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