使用需求特征提取从距离数据生成对象描述

F. Merat, Hsianglung Wu
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引用次数: 3

摘要

提出了一种基于需求的特征提取方法,用于在不同的特征层次上同时生成对象描述。物体是用特征来描述的,特征包括点、表面斑块、边缘、角和表面。这些特征形成一个特征空间,是将特征提取过程分解为不同层次的基础。FED提供了一种方法,可以从不同特征级别的部分处理距离数据中生成关于对象的部分描述。部分描述成为一种反馈,用于指导特征提取过程,从感兴趣的区域提取更详细的信息,然后用于改进对象描述。在进一步的处理中,不被认为包含有用信息的区域将被忽略。随着生成更完整的对象描述,FED从自下而上的图像处理收敛到自上而下的假设验证,生成完整的分层对象描述。
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Generation of object descriptions from range data using feature extraction by demands
A new method, called feature extraction by demands (FED), for generating an object description concurrently at different feature levels will be described. An object is described in terms of features which include points, surface patches, edges, corners, and surfaces. These features form a feature space which is the base used to decompose the feature extraction process into different levels. FED provides a method to generate partial descriptions about objects from partially processed range data at different feature levels. The partial descriptions become a feed-back to guide the feature extraction process to extract more detailed information from interesting areas which can then be used to refine the object description. Regions which are not perceived to contain useful infomation will be ignored in further processing. As a more complete object description is generated, FED converges from bottom-up image processing to top-down hypotheses verification to generate complete hierarchical object descriptions.
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