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Soft computing approaches for image segmentation: a survey

机译:用于图像分割的软计算方法:一项调查

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摘要

Image segmentation is the method of partitioning an image into a group of pixels that are homogenous in some manner. The homogeneity dependents on some attributes like intensity, color etc. Segmentation being a pre-processing step in image processing have been used in the number of applications like identification of objects to medical images, satellite images and much more. The taxonomy of an image segmentation methods collectively can be divided among two categories Traditional methods and Soft Computing (SC) methods. Unlike Traditional methods, SC methods have the ability to simulate human thinking and are flexible to work with their ownership function, have been predominantly applied to the task of image segmentation. SC techniques are tolerant of partial truth, imprecision, uncertainty, and approximations. Soft Computing approaches also having advantages of providing cost-effective, high performance and steadfast solutions. In this survey paper, our emphasis is on core SC approaches like Fuzzy logic, Artificial Neural Network, and Genetic Algorithm used for image segmentation. The contribution lies in the fact to present this paper to the researchers that explore state-of-the-art elaboration of almost all dimensions associated with the image segmentation. The idea is to encapsulate various aspects like emerging topics, methods, evaluation parameters, the problem associated with different type of images, databases, segmentation applications, and other resources so that, it could be advantageous for researchers to make effort in developing new methods for segmentation. The paper accomplishes with findings and concluding remarks.
机译:图像分割是将图像划分为以某种方式均匀的一组像素的方法。均匀性取决于某些属性,例如强度,颜色等。分割是图像处理中的预处理步骤,已在许多应用中使用,例如将对象识别为医学图像,卫星图像等等。图像分割方法的分类法可以分为传统方法和软计算(SC)方法两类。与传统方法不同,SC方法具有模拟人类思维的能力,并且灵活地使用其所有权功能,因此已主要应用于图像分割任务。 SC技术可以容忍部分真实性,不精确性,不确定性和近似值。软计算方法还具有提供经济高效,高性能和稳定解决方案的优势。在这份调查论文中,我们重点介绍了核心SC方法,例如模糊逻辑,人工神经网络和用于图像分割的遗传算法。贡献在于,将论文提交给研究人员,他们探索了与图像分割相关的几乎所有维度的最新技术。这个想法是封装各个方面,例如新兴的主题,方法,评估参数,与不同类型的图像,数据库,分割应用程序和其他资源相关的问题,以便研究人员为开发新方法进行研究可能是有利的。分割。本文完成了调查结果并作了总结。

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