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首页> 外文期刊>IEEE Transactions on Industrial Electronics >Modeling of ultrasonic range sensors for localization of autonomous mobile robots
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Modeling of ultrasonic range sensors for localization of autonomous mobile robots

机译:用于自主移动机器人定位的超声波测距传感器的建模

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摘要

This paper presents a probabilistic model of ultrasonic range sensors using backpropagation neural networks trained on experimental data. The sensor model provides the probability of detecting mapped obstacles in the environment, given their position and orientation relative to the transducer. The detection probability can be used to compute the location of an autonomous vehicle from those obstacles that are more likely to be detected. The neural network model is more accurate than other existing approaches, since it captures the typical multilobal detection pattern of ultrasonic transducers. Since the network size is kept small, implementation of the model on a mobile robot can be efficient for real-time navigation. An example that demonstrates how the credence could be incorporated into the extended Kalman filter (EKF) and the numerical values of the final neural network weights are provided in the appendices.
机译:本文提出了使用反向传播神经网络对实验数据进行训练的超声波测距传感器的概率模型。给定相对于传感器的位置和方向,传感器模型提供了检测环境中映射障碍的可能性。所述检测概率可以用于根据更可能被检测到的那些障碍来计算自动驾驶车辆的位置。神经网络模型比其他现有方法更准确,因为它捕获了超声换能器的典型多叶检测模式。由于网络规模保持较小,因此在移动机器人上实现模型对于实时导航可能是有效的。附录中提供了一个示例,该示例演示了如何将凭据合并到扩展的卡尔曼滤波器(EKF)中,并提供了最终神经网络权重的数值。

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