Measuring the Influence of Environmental Conditions on Automotive Lidar Sensors
TL;DR: In this paper , a novel data set is introduced and analyzed by pairing lidar values, such as the number of detections in the atmosphere, with weather parameters such as rain rate in mm/h.
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Abstract: Safety validation of automated driving functions is a major challenge that is partly tackled by means of simulation-based testing. The virtual validation approach always entails the modeling of automotive perception sensors and their environment. In the real world, these sensors are exposed to adverse influences by environmental conditions such as rain, fog, snow, etc. Therefore, such influences need to be reflected in the simulation models. In this publication, a novel data set is introduced and analyzed. This data set contains lidar data with synchronized reference measurements of weather conditions from a stationary long-term experiment. Recorded weather conditions comprise fog, rain, snow, and direct sunlight. The data are analyzed by pairing lidar values, such as the number of detections in the atmosphere, with weather parameters such as rain rate in mm/h. This results in expectation values, which can directly be utilized for stochastic modeling or model calibration and validation. The results show vast differences in the number of atmospheric detections, range distribution, and attenuation between the different sensors of the data set.
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Citations
A Survey on Ground Segmentation Methods for Automotive LiDAR Sensors
TL;DR: A survey of existing methods used to detect and extract ground points from LiDAR point clouds can be found in this paper , which summarizes the already extensive literature and proposes a comprehensive taxonomy to help understand the current ground segmentation methods that can be used in automotive Lidar sensors.
Survey on LiDAR Perception in Adverse Weather Conditions
Mariella Dreißig,Dominik Scheuble,Florian Piewak,Joschka Boedecker +3 more
- 04 Jun 2023
TL;DR: Survey on LiDAR Perception in Adverse Weather Conditions explores approaches to alleviate the decrease in LiDAR-based environment perception performance under adverse weather conditions.
Survey on LiDAR Perception in Adverse Weather Conditions
TL;DR: LiDAR-based environment perception is a valuable addition for environment perception for autonomous vehicles as discussed by the authors , however, due to light scattering and occlusion, the LiDAR's performance change under adverse weather conditions like fog, snow or rain.
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Camera-LiDAR Fusion Method with Feature Switch Layer for Object Detection Networks
Taek-Lim Kim,Tae-Hyoung Park +1 more
TL;DR: This work proposes a feature switch layer for a sensor fusion network for object detection in cameras and LiDAR that can consider its environment during network feature fusion and confirms that the proposed method improves the object detection performance.
Automatic Stub Avoidance for a Powered Prosthetic Leg over Stairs and Obstacles
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TL;DR: A novel stub avoidance controller that automatically adjusts prosthetic knee/ankle kinematics based on suprasensory measurements of environmental distance from a small, lightweight, low-power, low-cost ultrasonic sensor mounted above the prosthetic ankle.
6
References
nuScenes: A Multimodal Dataset for Autonomous Driving
Holger Caesar,Varun Bankiti,Alex H. Lang,Sourabh Vora,Venice Erin Liong,Qiang Xu,Anush Krishnan,Yu Pan,Giancarlo Baldan,Oscar Beijbom +9 more
- 14 Jun 2020
TL;DR: nuScenes as discussed by the authors is the first dataset to carry the full autonomous vehicle sensor suite: 6 cameras, 5 radars and 1 lidar, all with full 360 degree field of view.
•Posted Content
nuScenes: A multimodal dataset for autonomous driving
Holger Caesar,Varun Bankiti,Alex H. Lang,Sourabh Vora,Venice Erin Liong,Qiang Xu,Anush Krishnan,Yu Pan,Giancarlo Baldan,Oscar Beijbom +9 more
TL;DR: nuScenes as mentioned in this paper is the first dataset to carry the full autonomous vehicle sensor suite: 6 cameras, 5 radars and 1 lidar, all with full 360 degree field of view.
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How Well Are We Measuring Snow: The NOAA/FAA/NCAR Winter Precipitation Test Bed
Roy Rasmussen,Bruce Baker,John Kochendorfer,Tilden P. Meyers,Scott Landolt,Alexandre P. Fischer,Jenny Black,Julie M. Thériault,Paul A. Kucera,David Gochis,Craig D. Smith,Rodica Nitu,Mark E. Hall,Kyoko Ikeda,Ethan Gutmann +14 more
TL;DR: In this paper, the authors present recent efforts to understand the relative accuracies of different instrumentation and gauges with various windshield configurations to measure snowfall and highlight results from the National Center for Atmospheric Research (NCAR) Marshall Field Site.
Seeing Through Fog Without Seeing Fog: Deep Multimodal Sensor Fusion in Unseen Adverse Weather
Mario Bijelic,Tobias Gruber,Fahim Mannan,Florian Kraus,Werner Ritter,Klaus Dietmayer,Felix Heide +6 more
- 14 Jun 2020
TL;DR: In this paper, a multimodal dataset acquired in over 10,000~km of driving in northern Europe is presented, with 100k labels for lidar, camera, radar, and gated NIR sensors.
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Influences of weather phenomena on automotive laser radar systems
TL;DR: In this paper, the authors provide an overview on the different physical principles responsible for laser radar signal disturbance and theoretical investigations for estimation of their influence, which are applied for signal generation in a newly developed laser radar target simulator providing the worldwide first HIL test capability for automotive laser radar systems.