An optimal sound detection for robots in an unknown environment

Ishani Saha, A. Senthil
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引用次数: 2

Abstract

Robot technology has been rapidly developed more & more robots such as humanoid robots work with humans. The objective of this project is to develop a system for an autonomous mobile robot for searching and tracking sound source based target using sound sensors. Finding objects or events by following a sound source direction is an intuitive response for human and animal when they cannot see the target. Lego nxt sound sensor can detect the frequency of sound but is unable to detect the direction from where the sound is originating. PSO algorithm has been implemented for the optimization of the exact sound source. PSO (particle swarm optimization) is a stochastic population based computational method that optimizes the problem in each iteration, trying to improve the particle solutions and to get better quality of the particles each time. Objective function has been applied to detect the frequency and then the source continuously updates its position on the basis of frequency being detected. So that maximum frequency sound can be detected in minimum possible time and in exact location. Simulation work has been carried out by implementing the PSO algorithm in MATLAB to see how exactly the sound sources are detecting the frequency and at what particular frequency the source is exactly detecting the sound. Results have been computed by changing the number of iterations to see the exact location where the sound source is finding the frequency. Thus the main objective of this paper is to compute that the source is detecting the optimized maximum frequency sound by updating its gbest values continuously in every iteration and finally reaching the best possible value.
机器人在未知环境中的最佳声音检测
机器人技术得到了迅速发展,越来越多的机器人如人形机器人与人类一起工作。本课题的目标是为自主移动机器人开发一种基于声音传感器的声源搜索和跟踪系统。跟随声源方向寻找物体或事件是人类和动物在看不到目标时的直觉反应。乐高nxt声音传感器可以检测声音的频率,但无法检测声音的来源方向。采用粒子群算法对精确声源进行优化。PSO (particle swarm optimization)是一种基于随机种群的计算方法,它在每次迭代中对问题进行优化,每次都试图改进粒子解并获得更好的粒子质量。利用目标函数检测频率,源根据检测到的频率不断更新自身位置。这样就可以在最短的时间和准确的位置检测到最高频率的声音。通过在MATLAB中实现PSO算法,进行了仿真工作,以了解声源如何准确地检测频率以及在什么特定频率下声源准确地检测声音。结果是通过改变迭代次数来计算的,以查看声源找到频率的确切位置。因此,本文的主要目标是计算源在每次迭代中不断更新其gbest值,从而检测到优化后的最大频率声音,最终达到可能的最佳值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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