Deformable shape detection and description via model-based region grouping

S. Sclaroff, Lifeng Liu
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引用次数: 151

Abstract

A method for deformable shape detection and recognition is described. Deformable shape templates are used to partition the image into a globally consistent interpretation, determined in part by the minimum description length principle. Statistical shape models enforce the prior probabilities on global, parametric deformations for each object class. Once trained, the system autonomously segments deformed shapes from the background, while not merging them with adjacent objects or shadows. The formulation can be used to group image regions based on any image homogeneity predicate; e.g., texture, color or motion. The recovered shape models can be used directly in object recognition. Experiments with color imagery are reported.
基于模型的区域分组的可变形形状检测和描述
描述了一种可变形形状的检测与识别方法。可变形形状模板用于将图像划分为全局一致的解释,部分由最小描述长度原则确定。统计形状模型对每个对象类的全局参数变形强制执行先验概率。经过训练后,该系统会自动从背景中分割变形的形状,而不会将它们与相邻的物体或阴影合并。该公式可用于基于任意图像同质性谓词对图像区域进行分组;例如,纹理、颜色或运动。恢复的形状模型可以直接用于目标识别。本文报道了彩色图像的实验。
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