城市交通场景下的高效雷达时序检测

Zuyuan Guo, Haoran Wang, Wei Yi, Jiahao Zhang
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引用次数: 0

摘要

本文探讨了雷达距离-多普勒图上的目标检测。大多数雷达处理算法都是为了不分类地检测目标。同时,这些方法忽略了时态域中可用的有用信息。为了解决这些问题,我们提出了一种基于帧对帧预测和低计算关联的在线雷达深度时间检测框架。其核心思想是,一旦检测到一个物体,它的位置和类别可以在未来的框架中预测,以提高检测结果。实验结果表明,该方法取得了较好的检测和分类性能,显示了雷达数据在交通场景中的可用性。
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Efficient Radar Deep Temporal Detection in Urban Traffic Scenes
This paper explores object detection on radar range-Doppler map. Most of the radar processing algorithms are proposed for detecting objects without classifying. Meanwhile, these approaches neglect the useful information available in the temporal domain. To address these problems, we propose an online radar deep temporal detection framework by frame-to-frame prediction and association with low computation. The core idea is that once an object is detected, its location and class can be predicted in the future frame to improve detection results. The experiment results illustrate this method achieves better detection and classification performance, and shows the usability of radar data for traffic scenes.
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