Timely Fusion of Surround Radar/Lidar for Object Detection in Autonomous Driving Systems
Wenjing Xie, Tao Hu, Neiwen Ling, Guoliang Xing, Chun Jason Xue, Nan, Guan

TL;DR
This paper introduces a method to fuse surround Radar and Lidar data for autonomous driving, enabling high-frequency object detection by training a model to handle temporally unaligned sensor inputs, thus improving responsiveness.
Contribution
It presents a novel training approach that allows existing object detection models to fuse Radar and Lidar data at high frequency despite their temporal misalignment.
Findings
High detection frequency with minimal accuracy loss
Effective training strategies for unaligned sensor data
Enhanced object detection responsiveness in autonomous systems
Abstract
Fusing Radar and Lidar sensor data can fully utilize their complementary advantages and provide more accurate reconstruction of the surrounding for autonomous driving systems. Surround Radar/Lidar can provide 360-degree view sampling with the minimal cost, which are promising sensing hardware solutions for autonomous driving systems. However, due to the intrinsic physical constraints, the rotating speed of surround Radar, and thus the frequency to generate Radar data frames, is much lower than surround Lidar. Existing Radar/Lidar fusion methods have to work at the low frequency of surround Radar, which cannot meet the high responsiveness requirement of autonomous driving systems.This paper develops techniques to fuse surround Radar/Lidar with working frequency only limited by the faster surround Lidar instead of the slower surround Radar, based on the state-of-the-art object detection…
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Taxonomy
TopicsAdvanced Optical Sensing Technologies · Advanced SAR Imaging Techniques · Advanced Neural Network Applications
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
