集合(抽象数据类型)
一般化
计算机科学
人工智能
活动形状模型
图像(数学)
最小描述长度
模式识别(心理学)
基础(线性代数)
算法
数学
分割
几何学
数学分析
程序设计语言
作者
Rhodri Davies,Carole Twining,T.F. Cootes,John C. Waterton,Chris Taylor
标识
DOI:10.1109/tmi.2002.1009388
摘要
We describe a method for automatically building statistical shape models from a training set of example boundaries/surfaces. These models show considerable promise as a basis for segmenting and interpreting images. One of the drawbacks of the approach is, however, the need to establish a set of dense correspondences between all members of a set of training shapes. Often this is achieved by locating a set of "landmarks" manually on each training image, which is time consuming and subjective in two dimensions and almost impossible in three dimensions. We describe how shape models can be built automatically by posing the correspondence problem as one of finding the parameterization for each shape in the training set. We select the set of parameterizations that build the "best" model. We define "best" as that which minimizes the description length of the training set, arguing that this leads to models with good compactness, specificity and generalization ability. We show how a set of shape parameterizations can be represented and manipulated in order to build a minimum description length model. Results are given for several different training sets of two-dimensional boundaries, showing that the proposed method constructs better models than other approaches including manual landmarking-the current gold standard. We also show that the method can be extended straightforwardly to three dimensions.
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