论文标题
基于光子ISAR成像系统的高分辨率和可靠的自动目标识别,具有可解释的深度学习
High-resolution and reliable automatic target recognition based on photonic ISAR imaging system with explainable deep learning
论文作者
论文摘要
基于基于反合成孔径雷达(ISAR)图像的自动目标识别(ATR),该图像被广泛用于在军事和民用领域监视环境,必须是高精度和可靠的。光子技术的广泛带宽的优势使ISAR系统能够实现高分辨率成像,这有利于实现高性能ATR。深度学习(DL)算法已经达到了出色的识别精度。但是,DL算法缺乏可解释性会导致可信度的头部抓问题。在本文中,我们利用光子ISAR成像系统与卷积神经网络(CNN)的行为之间的内部关系来深入理解智能识别。具体而言,我们操纵成像物理过程并分析网络输出,ISAR映像和网络输出之间的相关性以及网络输出层中特征的可视化。因此,更宽的成像带宽和适当的成像角会导致更详细的结构和轮廓特征,以及不同目标的ISAR图像之间更大的差异,这有助于CNN根据物理定律识别和区分对象。然后,基于光子ISAR成像系统和可解释的CNN,我们完成了高临界性和可靠的ATR。据我们所知,没有先例可以通过探索数据生成的物理过程对网络行为的影响来解释DL算法。可以预料,这项工作不仅可以激发高性能ATR的实现,而且还带来了新的见解来探索网络行为,从而获得更好的智能能力。
Automatic target recognition (ATR) based on inverse synthetic aperture radar (ISAR) images, which is extensively utilized to surveil environment in military and civil fields, must be high-precision and reliable. Photonic technologies' advantage of broad bandwidth enables ISAR systems to realize high-resolution imaging, which is in favor of achieving high-performance ATR. Deep learning (DL) algorithms have achieved excellent recognition accuracies. However, the lack of interpretability of DL algorithms causes the head-scratching problem of credibility. In this paper, we exploit the inner relationship between a photonic ISAR imaging system and behaviors of a convolutional neural network (CNN) to deeply comprehend the intelligent recognition. Specifically, we manipulate imaging physical process and analyze network outputs, the relevance between the ISAR image and network output, and the visualization of features in the network output layer. Consequently, the broader imaging bandwidths and appropriate imaging angles lead to more detailed structural and contour features and the bigger discrepancy among ISAR images of different targets, which contributes to the CNN recognizing and distinguishing objects according to physical laws. Then, based on the photonic ISAR imaging system and the explainable CNN, we accomplish a high-accuracy and reliable ATR. To the best of our knowledge, there is no precedent of explaining the DL algorithms by exploring the influence of the physical process of data generation on network behaviors. It is anticipated that this work can not only inspire the accomplishment of a high-performance ATR but also bring new insights to explore network behaviors and thus achieve better intelligent abilities.