首页> 外文期刊>IEEE transactions on visualization and computer graphics >Converting discrete images to partitioning trees
【24h】

Converting discrete images to partitioning trees

机译:将离散图像转换为分区树

获取原文
获取原文并翻译 | 示例
       

摘要

The discrete space representation of most scientific datasets, generated through instruments or by sampling continuously defined fields, while being simple, is also verbose and structureless. We propose the use of a particular spatial structure, the binary space partitioning tree as a new representation to perform efficient geometric computation in discretely defined domains. The ease of performing affine transformations, set operations between objects, and correct implementation of transparency makes the partitioning tree a good candidate for probing and analyzing medical reconstructions, in such applications as surgery planning and prostheses design. The multiresolution characteristics of the representation can be exploited to perform such operations at interactive rates by smooth variation of the amount of geometry. Application to ultrasound data segmentation and visualization is proposed. The paper describes methods for constructing partitioning trees from a discrete image/volume data set. Discrete space operators developed for edge detection are used to locate discontinuities in the image from which lines/planes containing the discontinuities are fitted by using either the Hough transform or a hyperplane sort. A multiresolution representation can be generated by ordering the choice of hyperplanes by the magnitude of the discontinuities. Various approximations can be obtained by pruning the tree according to an error metric. The segmentation of the image into edgeless regions can yield significant data compression. A hierarchical encoding schema for both lossless and lossy encodings is described.
机译:通过仪器或通过对连续定义的字段进行采样而生成的大多数科学数据集的离散空间表示,虽然很简单,但也很冗长和无结构。我们建议使用特定的空间结构,即二进制空间分区树作为一种新的表示形式,以在离散定义的域中执行有效的几何计算。执行仿射变换,设置对象之间的操作以及透明性的正确实现的简便性,使得该分区树成为在诸如手术计划和假体设计等应用中探查和分析医学重建的理想人选。可以利用表示的多分辨率特性,通过平滑改变几何图形的数量以交互速率执行此类操作。提出了在超声数据分割和可视化中的应用。本文描述了从离散图像/体积数据集构造分区树的方法。为边缘检测而开发的离散空间算子用于在图像中定位不连续点,通过使用霍夫变换或超平面排序从中拟合包含不连续点的线/平面。通过按不连续性的大小对超平面的选择进行排序,可以生成多分辨率表示。通过根据误差度量修剪树,可以获得各种近似值。将图像分割为无边缘区域会产生明显的数据压缩。描述了用于无损和有损编码的分层编码方案。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号