Refining 3D Reconstructions: A Theoretical and Experimental Study of the Effect of Cross-Correlations

Thomas J.I., Hanson A., Oliensis J.
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引用次数: 15

Abstract

In robot navigation a model of the environment needs to be reconstructed for various applications, including path planning, obstacle avoidance, and determining where the robot is located. Traditionally, the model was acquired using two images (two-frame structure from motion) but the acquired models were unreliable and inaccurate. Recently, research has shifted to using several frames (multiframe structure from motion) instead of just two frames. However, almost none of the reported multiframe algorithms have produced accurate and stable reconstructions for general robot motion. The main reason seems to be that the primary source of error in the reconstruction-the error in the underlying motion-has been mostly ignored. Intuitively, if a reconstruction of the scene is made up of points, this motion error affects each reconstructed point in a systematic way. For example, if the translation of the robot is erroneous in a certain direction, all the reconstructed points would be shifted along the same direction. The contributions of this paper include mathematically isolating the effect of the motion error (as correlations in the structure error) and showing theoretically that these correlations can improve existing multiframe structure from motion techniques. Finally it is shown that new experimental results and previously reported work confirm the theoretical predictions.

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细化三维重建:相互关联效应的理论和实验研究
在机器人导航中,需要重建环境模型,用于各种应用,包括路径规划、避障和确定机器人的位置。传统的模型获取方法是采用两幅运动图像(两帧结构),但获取的模型不可靠且不准确。最近,研究已经转向使用几个帧(多帧结构从运动),而不是仅仅两个帧。然而,几乎没有报道的多帧算法产生准确和稳定的一般机器人运动重建。主要原因似乎是重建中的主要误差来源——潜在运动中的误差——大多被忽略了。直观地说,如果场景的重建是由点组成的,这种运动误差会系统地影响每个重建点。例如,如果机器人在某个方向上的平移错误,则所有重构点将沿同一方向移动。本文的贡献包括在数学上隔离运动误差的影响(作为结构误差中的相关性),并从理论上表明这些相关性可以从运动技术中改进现有的多帧结构。最后表明,新的实验结果和先前报道的工作证实了理论预测。
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