基于传感器融合的动态环境目标识别

K. S. Nagla, M. Uddin, Dilbag Singh, Rajeev Kumar
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引用次数: 3

摘要

多传感器数据融合在机器人应用中具有很高的应用价值,因为物体和事件之间的关系会因机器人方向的变化、感知信息的中断、传感器范围和环境条件等而发生变化。机器视觉中的高级和低级图像处理被广泛应用于研究复杂应用中的目标识别。由于视觉技术的限制,在某些环境中识别物体仍然存在困难。提出了一种基于声纳传感器融合的目标识别新技术。本文阐述了利用贝叶斯和神经网络进行动态环境中物体形状识别的数据融合的计算过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Object identification in dynamic environment using sensor fusion
Multisensor data fusion is highly applicable in robotics applications because the relationships among objects and events changes due to the change in orientation of robot, snag in sensory information, sensor range and environmental conditions etc. High level and low level image processing in machine vision are widely involved to investigate object identification in complex application. Due to the limitations of vision technology still it is difficult to identify the objects in certain environments. A new technique of object identification using sonar sensor fusion has been proposed. This paper explains the computational account of the data fusion using Bayesian and neural network to recognize the shape of object in the dynamic environment.
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