基于人工蜂群算法的医学图像分类特征选择

V. Agrawal, Satish Chandra
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引用次数: 35

摘要

医学图像处理中的特征选择是一个选择相关特征的过程,这些特征在模型构建中很有用,因为它可以减少训练次数,并且设计的分类模型更容易中断。本文将人工蜂群(Artificial Bee Colony, ABC)元启发式算法用于宫颈癌CT扫描图像的特征选择,目的是检测作为输入的数据是否为癌性。首先从分割开始,在图像上实现主动轮廓分割(ACM)算法。本文开发了一种半自动化的感兴趣区域(ROI)提取系统。进一步,提取Haralick提出的纹理特征感兴趣的区域。采用人工蜂群(ABC)和k-近邻(k- nn)算法、ABC和支持向量机(SVM)的杂交方法进行分类。观察到ABC与SVM(高斯核)的组合优于ABC与SVM(线性核)和ABC与K-NN分类器的组合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature selection using Artificial Bee Colony algorithm for medical image classification
Feature Selection in medical image processing is a process of selection of relevant features, which are useful in model construction, as it will lead to reduced training times and classification model designed will be easier to interrupt. In this paper a meta-heuristic algorithm Artificial Bee Colony (ABC) has been used for feature selection in Computed Tomography (CT Scan) images of cervical cancer with the objective of detecting whether the data given as input is cancerous or not. Starting with segmentation as a first step, performed by implementing Active Contour Segmentation (ACM) algorithm over the images. In this paper a semi-automated the system has been developed so as to obtain the region of interest (ROI). Further, textural features proposed by Haralick are extracted region of interest. Classification is performed using hybridization of Artificial Bee Colony (ABC) and k- Nearest Neighbors (k-NN) algorithm, ABC and Support Vector Machine (SVM). It is observed that combination of ABC with SVM (Gaussian kernel) performs better than combination of ABC with SVM (Linear Kernel) and ABC with K-NN classifier.
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