Seise Matthias, McKenna Stephen J, Ricketts Ian W, Wigderowitz Carlos A
School of Applied Computing, University of Dundee, DD1 4HN Dundee, UK.
IEEE Trans Med Imaging. 2007 May;26(5):666-77. doi: 10.1109/TMI.2007.895479.
Statistical shape models are often learned from examples based on landmark correspondences between annotated examples. A method is proposed for learning such models from contours with inconsistent bifurcations and loops. Automatic segmentation of tibial and femoral contours in knee X-ray images is investigated as a step towards reliable, quantitative radiographic analysis of osteoarthritis for diagnosis and assessment of progression. Results are presented using various features, the Mahalanobis distance, distance weighted K-nearest neighbours, and two relevance vector machine-based methods as quality of fit measure.
统计形状模型通常基于带注释示例之间的地标对应关系从示例中学习。本文提出了一种从具有不一致分支和环的轮廓中学习此类模型的方法。作为迈向对骨关节炎进行可靠、定量的放射学分析以用于诊断和评估病情进展的一步,研究了膝关节X线图像中胫骨和股骨轮廓的自动分割。使用各种特征、马氏距离、距离加权K近邻以及两种基于相关向量机的方法作为拟合质量度量来呈现结果。