基于计算机视觉的自动雷达数据标记

Jasmin Gabsteiger, Tim Maiwald, Simon Wünsche, R. Weigel, F. Lurz
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引用次数: 0

摘要

本文提出将现有的计算机视觉模型与高度集成的毫米波雷达系统相结合,实现雷达数据自动标注。预先训练的人员存在检测模型与相机传感器结合使用,以确定是否有人在场。二值预测用于标记同一景物的同时测量雷达数据。本文解决了不同的照明条件,相机和雷达传感器孔径角度和数据质量的挑战,这是在标签过程中的主要影响。该系统通过自动化标记过程显着减少了人力。它用于生成10,000个数据点,标记它们并以95.7%的准确率训练神经网络。最后,提出了基于自动标记数据的雷达活动检测的概念验证、训练和评估。所提出的方法可以在具有挑战性的光线条件下进行人的存在检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Radar Data Labeling through Computer Vision
This paper presents the combination of an existing computer vision model with a highly integrated mm-wave radar system for automated radar data labeling. A pre trained model for person presence detection is used in combination with a camera sensor to determine, whether a person is present or not. The binary prediction is used to label simultaneously measured radar data of the same scenery. The paper addresses the challenges of varying illumination conditions, camera and radar sensor aperture angles and data quality which are dominant influences at the labeling process. The system significantly decreases human effort by automating the labeling process. It is used to generate 10,000 data points, label them and train a neural network with 95.7% accuracy. Finally, a proof-of-concept, training, and evaluation of radar-based activity detection with automatically labeled data is presented. The proposed method can contribute in person presence detection under challenging light conditions.
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