一种尺寸不适合所有:用于雷达分类的多尺度,级联rnn

Dhrubojyoti Roy, S. Srivastava, Aditya Kusupati, Pranshu Jain, M. Varma, A. Arora
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引用次数: 13

摘要

利用微功率脉冲多普勒雷达进行边缘传感是智能城市监测和监控领域的一个新兴领域。杂波与多源雷达分类任务的现有解决方案在准确性或效率方面都受到限制,并且在某些情况下,在假警报和源召回之间进行权衡。我们发现这个问题可以通过跨多个时间尺度学习分类器来解决。我们提出了一种多尺度、级联的递归神经网络架构MSC-RNN,它由一个高效的多实例学习(MIL)递归神经网络(RNN)组成,在下层用于杂波识别,在上层由一个更复杂的RNN分类器用于源分类。通过在下层的帮助下有条件地控制上层RNN的调用,MSC-RNN实现了0.972的总体精度。我们的方法从整体上提高了适用于雷达推理的机器学习模型的准确性和每类召回。值得注意的是,我们超越了纯时域深度特征学习的跨域手工特征工程,同时也比竞争对手的解决方案效率高出3倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
One Size Does Not Fit All: Multi-Scale, Cascaded RNNs for Radar Classification
Edge sensing with micro-power pulse-Doppler radars is an emergent domain in monitoring and surveillance with several smart city applications. Existing solutions for the clutter versus multi-source radar classification task are limited in terms of either accuracy or efficiency, and in some cases, struggle with a trade-off between false alarms and recall of sources. We find that this problem can be resolved by learning the classifier across multiple time-scales. We propose a multi-scale, cascaded recurrent neural network architecture, MSC-RNN, comprised of an efficient multi-instance learning (MIL) Recurrent Neural Network (RNN) for clutter discrimination at a lower tier, and a more complex RNN classifier for source classification at the upper tier. By controlling the invocation of the upper RNN with the help of the lower tier conditionally, MSC-RNN achieves an overall accuracy of 0.972. Our approach holistically improves the accuracy and per-class recalls over machine learning models suitable for radar inferencing. Notably, we outperform cross-domain handcrafted feature engineering with purely time-domain deep feature learning, while also being up to ~3X more efficient than a competitive solution.
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