基于雷达的人工神经网络目标分类

Dajung Lee, Colman Cheung, Dan Pritsker
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引用次数: 5

摘要

随着这种传感器技术在军事、机器人、空间探索和自动驾驶汽车等许多应用中被广泛采用,基于雷达的目标检测成为一个更加重要的问题。然而,现有的雷达回波信号分类方法由于其确定性分析过于复杂,难以描述目标的各种特征,存在一定的局限性。它需要一种更复杂的方法来识别它们。在本文中,我们打算使用最先进的机器学习方法来解决这个问题,以读取雷达反射数据中其微多普勒特征中的目标特征或模式。在光谱图分析中,我们观察到物体的独特模式,这应该通过训练有素的机器学习算法来识别。我们训练受alexnet启发的卷积神经网络模型,通过雷达信号频谱图查看这些模式,并设计一个智能波形检测系统。我们使用Intel®Open VINO工具包在Intel®Xeon CPU和Intel®Arria 10 FPGA上演示了我们提出的系统,该工具包是一个统一的框架,可在不同平台上导入深度学习算法,并在给定的雷达数据集上实现自动目标分类的实时系统,准确率超过90%。
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Radar-based Object Classification Using An Artificial Neural Network
Radar-based object detection becomes a more important problem as such sensor technology is broadly adopted in many applications including military, robotics, space exploring, and autonomous vehicles. However, the existing solution for classification of radar echo signal is limited because its deterministic analysis is too complicated to describe various object features. It needs a more sophisticated approach that is capable of identifying them. In this paper, we intend to solve this problem using a state-of-art machine learning approach to read object features or patterns in their micro-Doppler signatures in radar reflection data. In spectrogram analysis, we observe unique patterns of objects, which should be recognizable by a well-trained machine learning algorithm. We train our AlexNet-inspired convolutional neural network model to see these patterns over their radar signal spectrogram and design an intelligent waveform detection system. We demonstrate our proposed system on an Intel® Xeon CPU and an Intel® Arria 10 FPGA using Intel® Open VINO toolkit, a unified framework to import deep learning algorithms in different platforms and achieve a real-time system for automated object classification with over 90% of accuracy on a given radar dataset.
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