一种基于雷达与相机融合算法的目标检测方法

Sheng Zhuang, Lin Cao, Zongmin Zhao, Dongfeng Wang
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引用次数: 0

摘要

本文提出了一种基于雷达与视频融合的汽车驾驶过程中周围物体检测方法。这通常是一种通过使用多个感官来提高鲁棒性和准确性的方法,这使得传感器融合成为感知系统的关键部分。我们提出了一种新的融合方法,称为CT-EPNP,利用雷达和相机数据进行快速检测。在EPNP的基础上增加了中心融合算法,并在映射时使用截锥法对关联图像上的雷达信息进行补偿。CT-EPNP返回对象属性深度、旋转、速度等属性。在此基础上,进行了仿真验证和相关数学公式的推导。我们将改进后的算法与retanet模型相结合,在保证模型满足车辆正常行驶的同时,也获得了一定的检测率提高。在确保重复检测而不使用任何额外的时间信息方面,我们也做了一定的改进。
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A Target Detection Method Based on the Fusion Algorithm of Radar and Camera
The method based on the fusion of radar and video in this paper is oriented to detecting surrounding objects while driving. This is usually a method of improving robustness and accuracy by using several senses, which makes sensor fusion a key part of the perception system. We propose a new fusion method called CT-EPNP, which uses radar and camera data for fast detection. Adding a central fusion algorithm on the basis of EPNP, and use the truncated cone method to compensate the radar information on the associated image when mapping. CT-EPNP returns to the object attributes depth, rotation, speed and other attributes. Based on this, simulation verification and related derivation of mathematical formulas are proved. We combined the improved algorithm with the RetinaNet model to ensure that the model is satisfied with the normal driving of the vehicle while gaining a certain increase in the detection rate. We have also made a certain improvement in ensuring repeated detection without using any additional time information.
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