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超声图像中基于多模型的稳健形状跟踪

Robust shape tracking with multiple models in ultrasound images.

作者信息

Nascimento Jacinto C, Marques Jorge S

机构信息

Instituto Superior Tecnico, Instituta de Sistemas e Robotica, 1049-001 Lisboa, Portugal.

出版信息

IEEE Trans Image Process. 2008 Mar;17(3):392-406. doi: 10.1109/TIP.2007.915552.

Abstract

This paper addresses object tracking in ultrasound images using a robust multiple model tracker. The proposed tracker has the following features: 1) it uses multiple dynamic models to track the evolution of the object boundary, and 2) it models invalid observations (outliers), reducing their influence on the shape estimates. The problem considered in this paper is the tracking of the left ventricle which is known to be a challenging problem. The heart motion presents two phases (diastole and systole) with different dynamics, the multiple models used in this tracker try to solve this difficulty. In addition, ultrasound images are corrupted by strong multiplicative noise which prevents the use of standard deformable models. Robust estimation techniques are used to address this difficulty. The multiple model data association (MMDA) tracker proposed in this paper is based on a bank of nonlinear filters, organized in a tree structure. The algorithm determines which model is active at each instant of time and updates its state by propagating the probability distribution, using robust estimation techniques.

摘要

本文介绍了一种使用鲁棒多模型跟踪器对超声图像中的目标进行跟踪的方法。所提出的跟踪器具有以下特点:1)它使用多个动态模型来跟踪目标边界的演变;2)它对无效观测值(异常值)进行建模,减少其对形状估计的影响。本文所考虑的问题是跟踪左心室,这是一个具有挑战性的问题。心脏运动呈现出两个具有不同动力学的阶段(舒张期和收缩期),该跟踪器中使用的多个模型试图解决这一难题。此外,超声图像受到强烈的乘性噪声干扰,这使得标准的可变形模型无法使用。鲁棒估计技术被用于解决这一难题。本文提出的多模型数据关联(MMDA)跟踪器基于一组以树形结构组织的非线性滤波器。该算法通过使用鲁棒估计技术传播概率分布,来确定在每个时刻哪个模型是有效的,并更新其状态。

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