3D structure reconstruction from an ego motion sequence using statistical estimation and detection theory

Y.-L. Chang, J. Aggarwal
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引用次数: 38

Abstract

The paper discusses the problem of estimating 3D structures from an extended sequence of 2D images taken by a moving camera with known motion. The work is mainly concerned with sparse line features and thus is a natural extension of the feature-based motion analysis paradigm. Usually such a paradigm involves several separate operations: feature detection, feature matching, structure/motion estimation, and higher level processing, such as feature grouping. The authors propose to integrate the different phases based on the statistical estimation and detection theory. They show how each operation can be formalized and, in particular, consider the structure parameter estimation and the feature matching together as the combined estimation-decision problem. The proposed algorithm is tested with both synthetic and real data.<>
利用统计估计和检测理论对自我运动序列进行三维结构重建
本文讨论了从已知运动的移动摄像机拍摄的扩展的二维图像序列中估计三维结构的问题。该工作主要关注稀疏线特征,因此是基于特征的运动分析范式的自然扩展。通常这样的范例涉及几个独立的操作:特征检测、特征匹配、结构/运动估计和更高层次的处理,如特征分组。作者提出了基于统计估计和检测理论对不同阶段进行整合的方法。它们展示了如何形式化每个操作,特别是将结构参数估计和特征匹配一起考虑为组合估计决策问题。用合成数据和实际数据对该算法进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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