Environment recognition for a mobile robot using double ultrasonic sensors and a CCD camera

K. Song, Wen-Hui Tang
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引用次数: 8

Abstract

To move efficiently in an unknown or uncertain environment, a mobile robot must take observation from various sensors to provide information for path planning and execution. A sufficient representation of the external world would also be very useful for self-localization. One of the merits of applying multiple sensors to a mobile robot is the enhancement of environment recognition. In this paper, sensory information combined from double ultrasonic sensors and a CCD camera is provided for this purpose. The authors used ultrasonic sensors for distance measurement and a vision system for object boundaries detection. The authors developed an algorithm to eliminate errors due to the beam opening angle of ultrasonic sensors based on a dual transducer design. An extended discrete Kalman filter was used to fuse raw sensory data and reduce the influence of specular reflection of ultrasonic type transducers. Therefore a more reliable representation was obtained for environment recognition. Computer simulation as well as practical experimental results show that this sensory system can provide useful and robust environment recognition for intelligent robotics.<>
基于双超声传感器和CCD相机的移动机器人环境识别
为了在未知或不确定的环境中高效移动,移动机器人必须通过各种传感器的观察来提供路径规划和执行的信息。外部世界的充分表征对于自我定位也是非常有用的。将多传感器应用于移动机器人的优点之一是增强了环境识别能力。为此,本文采用双超声传感器和CCD相机相结合的传感信息。作者使用超声波传感器进行距离测量,并使用视觉系统进行物体边界检测。提出了一种基于双换能器设计的消除超声传感器开束角误差的算法。采用扩展离散卡尔曼滤波器融合原始传感数据,减小超声换能器镜面反射的影响。从而为环境识别提供了更可靠的表征。计算机仿真和实际实验结果表明,该传感系统可以为智能机器人提供有用的、鲁棒的环境识别
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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