基于eXclusive-ICA增强(XICABoost)算法的椎体活动分析的姿态估计

Huang Chao-hui
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引用次数: 2

摘要

椎体姿势在骨科中是非常重要的信息。自动椎体姿态估计可以为医学诊断提供直接支持。在本文中,我们提出了基于给定的两组训练模式的椎体姿态估计。第一组包含椎骨的图像,其中所有的脊柱都固定在一个适当的姿势;第二种是通过任意移动和旋转裁剪的图像。基于这两个模式集,该方法可以进行模板匹配。通过穷举搜索,我们将能够在给定的x射线图像上估计脊柱的姿势。我们提出了一种从给定训练模式中提取关键信息的新方法。在这项工作中,我们使用它来估计脊柱在x射线图像上的姿势。该方法包括两个部分:特征提取和分类。第一部分从两个给定的训练模式集中提取出独特的特征。这些独特的功能被用来支持第二部分,这是一个受著名的AdaBoost启发的分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pose estimation for vertebral mobility analysis using eXclusive-ICA based boosting (XICABoost) algorithm
The vertebral pose is critical information in orthopedics. An automated vertebral pose estimation can provide direct supports to medical diagnoses. In this paper, we proposed a vertebral pose estimation based on the given two sets of training patterns. The first set contains the images of vertebrae, in which all vertebral columns are fixed at a proper pose; the second are the images which are cropped with arbitrarily shift and rotation. Based on these two pattern sets, the proposed method can perform template matching. By using exhaustive searching, we will be able to estimate the poses of the vertebral columns on the given x-ray images. We propose a new approach for extracting critical information from the given training patterns in the problems of classification. In this work, we use it to estimate the poses of vertebral columns on x-ray images. The proposed method consists of two parts: 1, feature extraction and 2, classification. the first part extracts the unique features from the two given training pattern sets. These unique features are used to support the second part, which is a classifier inspired by the famous AdaBoost.
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