无线胶囊内镜框架的特征选择与分类

Poh Chee Khun, Zhang Zhuo, L. Z. Yang, Liyuan Li, Liu Jiang
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引用次数: 31

摘要

无线胶囊内镜(WCE)是检测小肠异常的重要设备。尽管新兴技术,审查胶囊内窥镜视频是一项劳动密集型任务,非常耗时。计算工具可以自动检测信息帧并标记出血、溃疡或肿瘤等异常情况,这将大大减少临床医生的工作量。在本文中,我们基于不同的特征提取和选择标准探索了各种机器学习方法,并开发了一种优化的分类方法。实验结果表明,与纹理特征相比,无论选择何种机器学习方法,使用颜色特征进行分类的准确率都更高。所提出的方法已应用于胶囊内窥镜检查的实际数据。对于信息帧检测,使用颜色特征的分类方法对支持向量机(SVM)和神经网络(NN)分类器的准确率分别为94.10%和93.44%。对于使用颜色特征的出血检测,SVM和NN的准确率分别达到99.41%和98.97%。此外,我们还研究了特征提取和分类所需的计算时间。在我们的实验中,颜色特征在WCE图像分类中明显优于纹理特征。使用颜色特征的总计算时间(每帧)分别为0.7125s(支持向量机的信息帧)、1.0329s(支持神经网络的信息帧)、0.51s(支持向量机的出血帧)和1.2163s(支持神经网络的出血帧)。在此基础上,将开发更多用于胃肠道疾病检测的分类器。
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 and classification for Wireless Capsule Endoscopic frames
Wireless Capsule Endoscopy (WCE) is an important device to detect abnormalities in small intestine. Despite emerging technologies, reviewing capsule endoscopic video is a labor intensive task and very time consuming. Computational tools which automatically detect informative frames and tag abnormal conditions such as bleeding, ulcer or tumor will dramatically reduce the clinician's effort. In this paper, we explored various machine-learning methodologies based on different feature extraction and selection criteria, and developed an optimized classification method. The experiment results shows that, comparing to texture feature, using color feature for classification achieved better accuracy, regardless of machine-learning method chosen. The proposed method has been applied in real data taken from capsule endoscopic exams. For informative frames detection, classification method using color feature gives an accuracy of 94.10% and 93.44% for support vector machines (SVM) and neural network (NN) classifiers respectively. For the bleeding detection using color feature, the accuracy achieved 99.41% and 98.97% for SVM and NN respectively. In addition, we also investigated the computational time required for feature extraction and classification. In our experiments, color feature significantly outperformed texture feature in WCE image classification. The overall computational time (per frame) using color feature is 0.7125s (informative frame with SVM), 1.0329s (informative frame with NN), 0.51s (bleeding frame with SVM) and 1.2163s (bleeding frame with NN). Classifiers for more gastro-intestinal (GI) diseases detection will be developed based on this work subsequently.
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