基于势阱空间嵌入的姿态确定

Limin Shang, M. Greenspan
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引用次数: 11

摘要

提出了一种从稀疏距离数据中估计物体姿态的新算法。采用ICP算法在预处理模型和运行时数据之间找到相应的局部最小值来解决姿态确定问题。与其他试图避免局部最小值的现有算法不同,这里使用局部最小值作为有效的特征向量来生成姿态的多个假设。然后使用有界霍夫变换检查和验证这些假设,这比直接使用配准误差更健壮。在预处理和运行时,每个ICP只需要少量的迭代(例如5次),这使得该技术效率很高。该算法已经在各种物体上实现和测试,包括自由形状模型,使用来自激光雷达和立体视觉传感器的模拟和真实数据。实验结果表明,该技术在标准硬件上以每秒多帧的速度运行,是有效的。此外,它可以很好地处理非常稀疏的数据,每帧可能只有数百个点,并且它对测量误差和异常值也具有鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pose Determination By PotentialWell Space Embedding
A novel algorithm is introduced to estimate the pose of objects from sparse range data. Pose determination is tackled by employing the ICP algorithm to find corresponding local minima between a preprocessed model and the runtime data. Unlike other existing algorithms that try to avoid local minima, here local minima are used as effective feature vectors for generating multiple hypotheses of the pose. These hypotheses are then examined and verified using the bounded Hough transform, which is more robust than using the registration error directly. Only a small number of iterations (e.g., 5) is needed for each ICP at both preprocessing and runtime, which makes the technique efficient. The algorithm has been implemented and tested on a variety of objects, including freeform models, using both simulated and real data from Lidar and stereovision sensors. The experimental results show the technique to be both effective and efficient, executing at multiple frames per second on standard hardware. In addition, it functions well with very sparse data, possibly comprising only hundreds of points per frame, and it is also robust to measurement error and outliers.
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