发明名称 Vessel identification using shape and motion mapping for coronary angiogram sequences
摘要 Embodiments of the invention relate to automating image classification with respect to coronary vessels in an angiography sequence. Two primary elements are employed, including training and recognition. Training pertains to the pre-processing images and extracting salient features that characterize the appearance of coronary arteries under different viewpoints. Recognition pertains to extraction of features from a new image sequence and determining a classification boundary for the new image from previously classified and labeled image sequences.
申请公布号 US9008393(B2) 申请公布日期 2015.04.14
申请号 US201213593004 申请日期 2012.08.23
申请人 International Business Machines Corporation 发明人 Beymer David J.;Greenspan Hayit;Syeda-Mahmood Tanveer;Wang Fei;Zhang Yong
分类号 G06K9/00;G06K9/46;G06K9/62;G06T7/00 主分类号 G06K9/00
代理机构 Lieberman & Brandsdorfer, LLC 代理人 Lieberman & Brandsdorfer, LLC
主权项 1. A computer-implemented method comprising: pre-processing a coronary angiography sequence of images, the images depicted in an image frame, the pre-processing including: detecting and labeling regions of interest in at least a subset of images of the sequence, wherein the region of interest contains a coronary vessel;estimating shape and motion in at least the subset of images of the image sequence, including extracting centerline curves of coronary vessels and computing optical flow within an angiogram sequence;sampling the extracted centerline curves to generate feature points;sampling a surrounding region of the generated feature points to capture shape and motion context of a depicted vessel;forming a feature set for classification of the depicted vessel, wherein features are constructed from pyramid histograms of shape and motion context;building a first pyramid histogram representation of a shape of the vessel shape and a second pyramid histogram representation of motion of the vessel; andforming a matrix from combined shape and motion vectors, a first dimension in the matrix corresponding to features at each keypoint and a second dimension representing one aspect of the shape context or one aspect of the motion context; determining a set of characteristics separating data in feature space, where the feature set is derived from pyramid histograms of the samplings, and employs angiogram sequences with known viewpoint labels; and returning a classification result for a new sequence of images based on a recognized shape and motion of the vessel, including labeling the new sequence of images.
地址 Armonk NY US