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首页> 外文期刊>IEEE transactions on industrial informatics >Multifidelity Sampling for Fast Bayesian Shape Estimation With Tactile Exploration
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Multifidelity Sampling for Fast Bayesian Shape Estimation With Tactile Exploration

机译:快速贝叶斯形状估计与触觉勘探的多尺度抽样

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摘要

This article presents a novel multifidelity-based optimal sampling method to rapidly estimate the shape of an object from the touch-down points on its surface given a highly limited number of sampling trials. The proposed approach attempts to improve the existing shape estimation via tactile exploration, which uses Gaussian process regression for implicit surface modeling with sequential sampling. The main objective is to make the process of sample point selection more efficient and systematic such that the unknown shape can be estimated fast and accurately with highly limited sample points (e.g., less than 1% of the original dataset). Specifically, we propose to select the next best sample point based on two optimization criteria: 1) the mutual information (MI) for uncertainty reduction, and 2) the local curvature for fidelity enhancement. The combination of these two objectives leads to an optimal sampling process that balances between the exploration of the whole shape and the exploitation of the local area where the higher fidelity (or more sampling) is required. Simulation and experimental results successfully demonstrate the advantage of the proposed method in terms of estimation speed and accuracy over the conventional methods. Our approach allows us to reconstruct recognizable three dimensional shapes using only around optimally selected 0.4% of the original dataset.
机译:本文介绍了一种基于新的基于多尺的最佳采样方法,以迅速估计其表面上的触摸点的物体的形状,给出了高度有限数量的采样试验。所提出的方法试图通过触觉探索来改善现有的形状估计,这利用了通过顺序采样对隐式表面建模的高斯进程回归。主要目的是使采样点选择的过程更有效和系统,使得可以快速且准确地估计未知形状(例如,小于原始数据集的1%)。具体而言,我们建议选择基于两个优化标准的下一个最佳样本点:1)用于不确定减少的互信息(MI),以及2)保真性增强的局部曲率。这两个目标的组合导致最佳采样过程,其在整个形状的探索和局部区域的利用之间进行平衡,其中需要更高保真度(或更多或更多采样)。模拟和实验结果成功地证明了在常规方法的估计速度和准确性方面的优势。我们的方法允许我们仅使用围绕最佳选择的原始数据集重建识别的三维形状。

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