Using an amalgamation of techniques from classical radar, computer vision, and deep learning, we characterize our ongoing data-driven approach to space-time adaptive processing (STAP) radar. We generate a rich example dataset of received radar signals by randomly placing targets of variable strengths in a predetermined region using RFView, a site-specific radio frequency modeling and simulation tool developed by ISL Inc. For each data sample within this region, we generate heatmap tensors in range, azimuth, and elevation of the output power of a minimum variance distortionless response (MVDR) beamformer, which can be replaced with a desired test statistic. These heatmap tensors can be thought of as stacked images, and in an airborne scenario, the moving radar creates a sequence of these time-indexed image stacks, resembling a video. Our goal is to use these images and videos to detect targets and estimate their locations, a procedure reminiscent of computer vision algorithms for object detection$-$namely, the Faster Region-Based Convolutional Neural Network (Faster R-CNN). The Faster R-CNN consists of a proposal generating network for determining regions of interest (ROI), a regression network for positioning anchor boxes around targets, and an object classification algorithm; it is developed and optimized for natural images. Our ongoing research will develop analogous tools for heatmap images of radar data. In this regard, we will generate a large, representative adaptive radar signal processing database for training and testing, analogous in spirit to the COCO dataset for natural images. As a preliminary example, we present a regression network in this paper for estimating target locations to demonstrate the feasibility of and significant improvements provided by our data-driven approach.
翻译:利用古典雷达、计算机视觉和深层学习等技术的混合技术,我们把目前的数据驱动方法描述为对空间-时间适应性处理雷达(STAP)雷达采用的数据驱动方法;我们利用RFView,即由ISL Inc开发的现场专用无线电频率建模和模拟工具,在预定区域随机放置不同强力的目标,从而生成接收雷达信号的丰富示例数据集。我们的目标是利用这些图像和视频来探测目标并估计其位置,在区域内每个数据样本中产生射程的热映射阵列,方位,提高最低差异无偏差的雷达信号反应(MVDRDR)的输出功率,并用理想的测试数据数据来取代这些图像。这些热映射阵列可被视为堆叠的图像,在空气中可以将这些热映射阵列的图像视为堆叠叠式的图像。 快速的 R-NRCI 模型将用来为我们当前正轨数据定位的网络和正轨数据定位数据库, 将用来为我们正轨的正轨图像的定位数据库 。