Discrete pose space estimation to improve ICP-based tracking

Limin Shang, P. Jasiobedzki, M. Greenspan
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引用次数: 18

Abstract

Iterative closest point (ICP)-based tracking works well when the interframe motion is within the ICP minimum well space. For large interframe motions resulting from a limited sensor acquisition rate relative to the speed of the object motion, it suffers from slow convergence and a tendency to be stalled by local minima. A novel method is proposed to improve the performance of ICP-based tracking. The method is based upon the bounded Hough transform (BHT) which estimates the object pose in a coarse discrete pose space. Given an initial pose estimate, and assuming that the interframe motion is bounded in all 6 pose dimensions, the BHT estimates the current frame's pose. On its own, the BHT is able to track an object's pose in sparse range data both efficiently and reliably, albeit with a limited precision. Experiments on both simulated and real data show the BHT to be more efficient than a number of variants of the ICP for a similar degree of reliability. A hybrid method has also been implemented wherein at each frame the BHT is followed by a few ICP iterations. This hybrid method is more efficient than the ICP, and is more reliable than either the BHT or ICP separately.
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离散姿态空间估计改进基于icp的跟踪
当帧间运动在ICP最小井空间内时,基于迭代最近点(ICP)的跟踪效果良好。对于相对于物体运动速度有限的传感器采集速率导致的大帧间运动,它的收敛速度很慢,并且有被局部最小值所停滞的趋势。提出了一种提高基于icp的跟踪性能的新方法。该方法基于有界霍夫变换(BHT),该变换在粗糙离散姿态空间中估计目标姿态。给定初始姿态估计,并假设帧间运动在所有6个姿态维度上都是有界的,BHT估计当前帧的姿态。就其本身而言,BHT能够在稀疏范围数据中高效可靠地跟踪物体的姿态,尽管精度有限。在模拟和真实数据上的实验表明,在相似的可靠性程度上,BHT比ICP的许多变体更有效。还实现了一种混合方法,其中在每一帧BHT之后进行一些ICP迭代。这种混合方法比ICP方法更有效,比单独使用BHT或ICP方法更可靠。
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