Towards Sound-source Position Estimation using Mutual Information for Next Best View Motion Planning

Mohammad Fattahi Sani, Brendan Emery, D. Caldwell, L. Mattos, N. Deshpande
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Abstract

Robotic operations in the real world rely on bearing-only sensors, e.g., optical, acoustic, etc., to sense physical phenomena. Bearing-only sensors are limited because they do not provide range information. To overcome this limitation in estimating source locations, the most common solutions involve making multiple measurements from different locations, either through multiple sensors in the field or a single moving sensor, and then applying triangulation or filtering. In unknown environments with single motion-capable sensors (e.g., mobile robots with on-board sensors), planned motion of the sensor can allow accurate and efficient source position estimation. This paper presents a novel approach in estimating the locations of stationary sources, using a motion-capable sensor. The proposed method combines the concepts of Extended Kalman Filter (EKF) and Mutual Information (MI) from information theory to estimate the Next Best View (NBV) pose to which the sensor should be moved. A utility function, that accounts for the movement cost, the characteristics of the sensor, and the MI and EKF information, facilitates efficient estimation. The proposed algorithm has been implemented in the realworld for Sound-source Position Estimation (SPE), using an acoustic sensor mounted at the end of a 6 degrees-of-freedom (DOF) robotic manipulator. The algorithm, termed as NBV-SPE, proves its utility and performance through preliminary indoor and outdoor experiments for sound sources in 3D space.
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基于互信息的下一个最佳视点运动规划声源位置估计
现实世界中的机器人操作依赖于纯方位传感器,例如光学、声学等,来感知物理现象。只有方位的传感器是有限的,因为它们不能提供距离信息。为了克服估计源位置的这种限制,最常见的解决方案包括从不同位置进行多次测量,要么通过现场的多个传感器,要么通过单个移动传感器,然后应用三角测量或滤波。在具有单一运动能力传感器的未知环境中(例如,具有机载传感器的移动机器人),传感器的计划运动可以实现准确有效的源位置估计。本文提出了一种利用运动传感器估计固定源位置的新方法。该方法结合了信息论中的扩展卡尔曼滤波(EKF)和互信息(MI)的概念来估计传感器应该移动到的下一个最佳视图(NBV)姿态。考虑移动成本、传感器特性、MI和EKF信息的效用函数有助于有效估计。该算法已在现实世界中用于声源位置估计(SPE),使用安装在6自由度(DOF)机器人机械手末端的声传感器。该算法被称为nvb - spe,通过对三维空间声源的初步室内和室外实验证明了其实用性和性能。
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