计算机科学
滤波器(信号处理)
计算机辅助设计
感兴趣区域
人工智能
计算机视觉
模糊逻辑
工程类
工程制图
作者
Nobuhiro Yamada,Mitsuru Kubo,Yoshiki Kawata,Noboru Niki,Kenji Eguchi,Hironobu Omatsu,Ryutaro Kakinuma,Masahiro Kaneko,Masahiko Kusumoto,Hyeong Dong Yuk,Noriyuki Moriyama
摘要
We have already developed a prototype of computer-aided diagnosis (CAD) system that can automatically detect suspicious shadows from Chest CT images. But the CAD system cannot detect Ground-Grass-Attenuation perfectly. In many cases, this reason depends on the inaccurate extraction of the region of interests (ROI) that CAD system analyzes, so we need to improve it. In this paper, we propose a method of an accurate extraction of the ROI, and compare proposed method to ordinary method that have used in CAD system. Proposed Method is performed by application of the three steps. Firstly we extract lung area using threshold. Secondly we remove the slowly varying bias field using flexible Opening Filter. This Opening Filter is calculated by the combination of the ordinary opening value and the distribution which CT value and contrast follow. Finally we extract Region of Interest using fuzzy clustering. When we applied proposal method to Chest CT images, we got a good result in which ordinary method cannot achieve. In this study we used the Helical CT images that are obtained under the following measurement: 10mm beam width; 20mm/sec table speed; 120kV tube voltage; 50mA tube current; 10mm reconstruction interval.
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