Akshay Mane, Mahesh Parihar, S. Jadhav, Bhavesh B. Digey
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引用次数: 1
摘要
在本文中,机器人应用使用基于微控制器ATmega2560的套件,安装低成本的红外传感器,通过卡尔曼滤波来确定或测量不同的参数,精确地进行未知区域的测绘和定位。本文重点比较了用平均法和卡尔曼滤波对红外传感器输出数据的精度。在计算位置编码器分辨率时,本文考虑了机器人前后运动和车轮顺时针、逆时针旋转的各种情况。利用概率密度函数(Probability Density Function, P.D.F)等不同的技术对机器人的实际位置进行概率估计,以验证机器人位置的不确定性,并发现与实际位置非常接近。同时定位和绘图(SLAM)是机器人在未知环境中使用最少传感器并获得可靠输出以识别未知区域的唯一方法。利用这种方法,机器人不仅能绘制出比GPS地图更精确的地图,而且还能以更低的成本对自己进行定位,根据绘制的地图更精确地确定自己的下一个位置。这个概念主要用于创建未知位置的地图,也可以通过为机器人配备适当的传感器来对给定区域进行定性分析。
Robotics based simultaneous localization and mapping of an unknown environment using Kalman Filtering
In this paper, Robotic application using a microcontroller ATmega2560 based kit mounted with low cost IR sensors for mapping and localization of unknown area is accurately carried out by using Kalman Filtering to determine or measure different parameters. This paper highlights the comparison between the accuracies of output data obtained from IR sensor using Average Technique as well as Kalman Filter. Various cases depending on robot movement in forward and backward direction and wheel rotation in clockwise and anticlockwise direction, are considered in this paper to calculate position encoder resolution. Also probabilistic estimation of actual position of robot is carried out using different techniques i.e Probability Density Function (P.D.F) for verifying the uncertainty in its position and found to be very close to actual position. Simultaneous Localization And Mapping (SLAM) is the only way a robot can navigate through an unknown environment with the use of minimum sensors and get reliable output of the same in identifying an unknown area. Using this method the robot not only create a map more accurate than GPS maps but also localize itself to determine its next position according to the map created more accurately at lower cost. Primarily used for creating a map of an unknown location, this concept can also be used to perform Qualitative Analysis of a given area by equipping the robot with appropriate sensors.