基于噪声和采样位置数的超声目标神经网络检测

P. Kroh, Ralph Simon, S. Rupitsch
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引用次数: 1

摘要

本文提出了一种基于神经网络的空中声纳目标探测方法。我们的方法可以促进自主移动系统通过使用声纳信息可靠地检测和分类周围的物体。这项任务在变化和无组织的环境中可能非常重要。我们使用长短期记忆网络作为分类器进行目标识别。这样可以处理每个输入序列中来自多个位置的可变数量的回波,从而便于更灵活的操作。研究了每个序列记录位置数和噪声的影响。此外,我们证明了与以前从多层感知器获得的结果相比,分类性能有所提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Network-Based Detection of Ultrasonic Targets with Respect to Noise and Number of Sampling Positions
A neural network-based approach for detection of sonar targets in air is presented in this contribution. Our approach may facilitate autonomous mobile systems to reliably detect and classify objects in their surrounding by using sonar information. This task might be extremely important in changing as well as unorganized environments. We perform target iden-tification with long short-term memory networks as classifiers. Such are capable of dealing with variable numbers of echoes from multiple positions per input sequence, which facilitates more flexible operation. The impact of the number of recording positions per sequence and of noise is investigated. Furthermore, we demonstrate the improvement in classification performance in comparison to previously obtained results from multi-layer-perceptrons.
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