Wu Di, Zhang Ming, Liu Jyh-Charn, Bauman Wendall
Computer Science Department, Texas A&M University, College Station 77843-3112, USA.
IEEE Trans Biomed Eng. 2006 Feb;53(2):341-3. doi: 10.1109/TBME.2005.862571.
This paper proposes an automated blood vessel detection scheme based on adaptive contrast enhancement, feature extraction, and tracing. Feature extraction of small blood vessels is performed by using the standard deviation of Gabor filter responses. Tracing of vessels is done via forward detection, bifurcation identification, and backward verification. Tests over twenty images show that for normal images, the true positive rate (TPR) ranges from 80% to 91%, and their corresponding false positive rates (FPR) range from 2.8% to 5.5%. For abnormal images, the TPR ranges from 73.8% to 86.5% and the FPR ranges from 2.1% to 5.3%, respectively. In comparison with two published solution schemes that were also based on the STARE database, our scheme has lower FPR for the reported TPR measure.
本文提出了一种基于自适应对比度增强、特征提取和追踪的自动血管检测方案。小血管的特征提取通过使用Gabor滤波器响应的标准差来执行。血管的追踪通过前向检测、分叉识别和反向验证来完成。对20幅图像的测试表明,对于正常图像,真阳性率(TPR)范围为80%至91%,其相应的假阳性率(FPR)范围为2.8%至5.5%。对于异常图像,TPR范围分别为73.8%至86.5%,FPR范围为2.1%至5.3%。与同样基于STARE数据库的两种已发表的解决方案相比,我们的方案在报告的TPR测量中具有更低的FPR。