使用微缩模型进行3D体定位

Luka Sajn, M. Radojević, T. Dobravec
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引用次数: 0

摘要

在大多数专用CAD系统中,预测给定体积样本在全身地图集中的位置,也称为体积定位,是图像检索的初始阶段的一部分。本文提出了两种体定位方法,即直方图匹配和分类器回归。由于直方图匹配方法忽略了空间方向,所以在立方体体的方向不相同的情况下使用。另一方面,分类器回归要快得多,可以用作快速估计和减少初始问题范围的工具。这两种方法都在包含3962卷人体图谱的数据集上进行了测试。本文对这两种算法的执行精度和速度进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3D volume localization using miniatures
The prediction of the position of a given volume sample in a full body atlas, also known as a volume localization, is a part of an initial stage of image retrieval in most of the dedicated CAD systems. In this paper we present two methods for volume localization, namely histogram matching and classifier regression. Since the histogram matching method ignores the spatial orientation, it is used when the orientation of the volume cubes are not the same. On the other hand the classifier regression is much faster and can be used as a quick estimation and as a tool to reduce the scope of the initial problem. Both presented methods were tested on a dataset with 3962 volumes of a human body atlas. The accuracy and the speed of execution was compared and is presented in this paper.
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