基于成像几何的SAR目标识别隐式神经表示

IF 5.7 2区 计算机科学 Q1 ENGINEERING, AEROSPACE IEEE Transactions on Aerospace and Electronic Systems Pub Date : 2025-02-07 DOI:10.1109/TAES.2025.3538571
Ziheng Cheng;Yucheng Ding;Chunhui Qu;Bo Chen
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引用次数: 0

摘要

虽然合成孔径雷达(SAR)自动目标识别的研究已经很成熟,但很多研究都假设有足够的数据,即大量的训练样本。然而,获取足够的标记SAR数据是具有挑战性的,这使得在实际场景中很难从不同的角度为每个目标获得足够的样本。以往的方法依赖于从邻近视点合成或使用数据驱动的生成网络来扩展数据,这些方法相对简单,但缺乏可解释性。为了解决这个问题,我们提出了一个基于SAR成像几何的隐式神经表示模型,称为SAR- inr,来表示目标的三维电磁后向散射强度。该模型能够合成不可见视点的SAR图像,仅使用有限数量的视点图像进行训练。具体来说,我们的方法采用神经网络来表示SAR场景,使用查询点的空间坐标和波束方向作为输入来预测它们的密度和强度。我们引入了一种严格的SAR极极几何模型,将二维SAR图像的像素位置反演为三维空间网格。使用SAR图像的实际像素值作为地面真值来优化网络的参数,以监督这些网格的渲染输出。经过训练后,该模型可以从未知视点合成SAR图像,有效提高数据利用率。在真实数据上的实验结果表明,我们的方法不仅扩展了未知视角的综合能力,而且在有限的数据样本下显著提高了性能。
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Implicit Neural Representation With Imaging Geometry for SAR Target Recognition
Although research on synthetic aperture radar (SAR) automatic target recognition is well established, many studies assume that sufficient data are available, i.e., a large number of training samples. However, acquiring sufficiently labeled SAR data is challenging, making it difficult to obtain adequate samples from various viewpoints for each target in practical scenarios. Previous methods rely on synthesizing from neighboring viewpoints or using data-driven generative networks to extend the data, which are relatively straightforward but lack interpretability. To address this, we propose an implicit neural representation model based on the imaging geometry of SAR, named SAR-INR, to represent the 3-D electromagnetic backscatter intensity of a target. This model is capable of synthesizing SAR images of unseen viewpoints, using only a limited number of viewpoint images for training. Specifically, our method employs a neural network to represent an SAR scene, using the spatial coordinates and beam orientation of query points as inputs to predict their density and intensity. We introduce a rigorous SAR epipolar geometry modeling to inverse the pixel position of the 2-D SAR image into 3-D spatial grids. The parameters of the network are optimized using the actual pixel values from the SAR images as ground truth to supervise the rendered outputs for these grids. Once trained, this model can synthesize SAR images from unseen viewpoints, effectively enhancing data utilization. Experimental results on real data show that our method not only expands the ability to synthesize unseen perspectives but also significantly enhances performance with limited data samples.
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来源期刊
CiteScore
7.80
自引率
13.60%
发文量
433
审稿时长
8.7 months
期刊介绍: IEEE Transactions on Aerospace and Electronic Systems focuses on the organization, design, development, integration, and operation of complex systems for space, air, ocean, or ground environment. These systems include, but are not limited to, navigation, avionics, spacecraft, aerospace power, radar, sonar, telemetry, defense, transportation, automated testing, and command and control.
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