Selective Information Transmission using Convolutional Neural Networks for Cooperative Underwater Surveillance

Giovanni De Magistris, Murat Üney, P. Stinco, G. Ferri, A. Tesei, K. L. Page
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引用次数: 1

Abstract

Cooperation among multiple autonomous surface and underwater vehicles is an important capability for detection and tracking of underwater objects. Cooperative autonomy in the underwater environment, however, is challenged by the communication bandwidth. In this work, we propose a selective communication scheme that underpins collaborative surveillance under communication constraints. This scheme classifies signal reflections of sonar pulses that are detected by on-board sensor processing as contacts with the object of interest or background using a convolutional neural network. This network is trained using previously labelled contact spectrograms obtained during three sea trials carried out between 2016–2018. The classification scores at the CNN output are ordered to select the few contacts that the underwater modem bandwidth allows for transmission to the network. First, we evaluate the accuracy of the data-driven information selection scheme using recall scores and similar performance measures. Then, we find the accuracy in Bayesian recursive filtering (tracking) of these contacts for different communication rates using established error metrics. The results suggest that the selective scheme yields a favourable surveillance performance communication cost trade-off.
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基于卷积神经网络的水下协同监视选择性信息传输
多自主水面和水下航行器之间的协作是水下目标探测和跟踪的重要能力。然而,水下环境下的协作自主性受到通信带宽的挑战。在这项工作中,我们提出了一种选择性通信方案,该方案支持通信约束下的协作监视。该方案使用卷积神经网络将机载传感器处理检测到的声纳脉冲的信号反射分类为与感兴趣对象或背景的接触。该网络使用在2016-2018年期间进行的三次海上试验中获得的先前标记的接触谱图进行训练。命令CNN输出的分类分数选择水下调制解调器带宽允许传输到网络的少数几个触点。首先,我们使用召回分数和类似的性能度量来评估数据驱动的信息选择方案的准确性。然后,我们发现贝叶斯递归滤波(跟踪)的准确度,这些接触不同的通信速率使用既定的误差指标。结果表明,选择性方案产生了良好的监控性能,通信成本的权衡。
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