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Systems and methods for recognizing objects in radar imagery

机译:在雷达图像中识别物体的系统和方法

摘要

The present invention is directed to systems and methods for detecting objects in a radar image stream. Embodiments of the invention can receive a data stream from radar sensors and use a deep neural network to convert the received data stream into a set of semantic labels, where each semantic label corresponds to an object in the radar data stream that the deep neural network has identified. Processing units running the deep neural network may be collocated onboard an airborne vehicle along with the radar sensor(s). The processing units can be configured with powerful, high-speed graphics processing units or field-programmable gate arrays that are low in size, weight, and power requirements. Embodiments of the invention are also directed to providing innovative advances to object recognition training systems that utilize a detector and an object recognition cascade to analyze radar image streams in real time. The object recognition cascade can comprise at least one recognizer that receives a non-background stream of image patches from a detector and automatically assigns one or more semantic labels to each non-background image patch. In some embodiments, a separate recognizer for the background analysis of patches may also be incorporated. There may be multiple detectors and multiple recognizers, depending on the design of the cascade. Embodiments of the invention also include novel methods to tailor deep neural network algorithms to successfully process radar imagery, utilizing techniques such as normalization, sampling, data augmentation, foveation, cascade architectures, and label harmonization.
机译:本发明涉及用于检测雷达图像流中的物体的系统和方法。本发明的实施例可以从雷达传感器接收数据流,并使用深度神经网络将接收到的数据流转换为一组语义标签,其中每个语义标签对应于深度神经网络具有的雷达数据流中的对象。确定。运行深度神经网络的处理单元可以与雷达传感器一起放置在机载车辆上。可以为处理单元配置功能强大,高速的图形处理单元或现场可编程门阵列,这些单元的尺寸,重量和功率要求都很低。本发明的实施例还旨在向物体识别训练系统提供创新的进展,该系统利用检测器和物体识别级联来实时分析雷达图像流。物体识别级联可以包括至少一个识别器,该至少一个识别器从检测器接收非背景图像斑块流,并自动向每个非背景图像斑块分配一个或多个语义标签。在一些实施例中,也可以并入用于补丁的背景分析的单独的识别器。根据级联的设计,可能有多个检测器和多个识别器。本发明的实施例还包括利用诸如归一化,采样,数据增强,集中,级联架构和标签协调的技术来定制深度神经网络算法以成功处理雷达图像的新颖方法。

著录项

  • 公开/公告号US10643123B2

    专利类型

  • 公开/公告日2020-05-05

    原文格式PDF

  • 申请/专利权人 GENERAL DYNAMICS MISSION SYSTEMS INC.;

    申请/专利号US201815976983

  • 发明设计人 JOHN PATRICK KAUFHOLD;

    申请日2018-05-11

  • 分类号G06N3/04;G01S13/90;

  • 国家 US

  • 入库时间 2022-08-21 11:26:40

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