TL;DR
This paper presents a low-level sensor fusion network that combines radar, lidar, and camera data for 3D object detection in automotive scenes, improving accuracy especially in adverse weather conditions.
Contribution
It introduces a novel radar lidar camera fusion network and a new loss function for better yaw estimation in 3D object detection.
Findings
Radar fusion increases detection AP by 5.1%
Fusion benefits are pronounced in rain and night scenes
New loss improves detection and orientation accuracy
Abstract
Automotive traffic scenes are complex due to the variety of possible scenarios, objects, and weather conditions that need to be handled. In contrast to more constrained environments, such as automated underground trains, automotive perception systems cannot be tailored to a narrow field of specific tasks but must handle an ever-changing environment with unforeseen events. As currently no single sensor is able to reliably perceive all relevant activity in the surroundings, sensor data fusion is applied to perceive as much information as possible. Data fusion of different sensors and sensor modalities on a low abstraction level enables the compensation of sensor weaknesses and misdetections among the sensors before the information-rich sensor data are compressed and thereby information is lost after a sensor-individual object detection. This paper develops a low-level sensor fusion…
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