Precise Adverse Weather Characterization by Deep-Learning-Based Noise Processing in Automotive LiDAR Sensors

被引:0
作者
Kettelgerdes, Marcel [1 ,2 ]
Sarmiento, Nicolas [2 ]
Erdogan, Hueseyin [3 ]
Wunderle, Bernhard [4 ]
Elger, Gordon [1 ,2 ]
机构
[1] Univ Appl Sci Ingolstadt, Inst Innovat Mobil IIMo, Esplanade 10, D-85049 Ingolstadt, Germany
[2] Fraunhofer Soc, Inst Transportat & Infrastructure Syst IVI, Stauffenberg Str 2, D-85051 Ingolstadt, Germany
[3] Conti Tem Microelect GmbH, Autonomous Mobil Div, Ringler Str 17, D-85057 Ingolstadt, Germany
[4] Tech Univ Chemnitz, Fac Elect Engn & Informat Technol, Reichenhainer Str 70, D-09126 Chemnitz, Germany
关键词
ADAS; adverse weather; weather classification; artificial intelligence; deep learning; Vision Transformer; LSTM; automotive; LiDAR; precipitation measurement; ARTIFICIAL FOG;
D O I
10.3390/rs16132407
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
With current advances in automated driving, optical sensors like cameras and LiDARs are playing an increasingly important role in modern driver assistance systems. However, these sensors face challenges from adverse weather effects like fog and precipitation, which significantly degrade the sensor performance due to scattering effects in its optical path. Consequently, major efforts are being made to understand, model, and mitigate these effects. In this work, the reverse research question is investigated, demonstrating that these measurement effects can be exploited to predict occurring weather conditions by using state-of-the-art deep learning mechanisms. In order to do so, a variety of models have been developed and trained on a recorded multiseason dataset and benchmarked with respect to performance, model size, and required computational resources, showing that especially modern vision transformers achieve remarkable results in distinguishing up to 15 precipitation classes with an accuracy of 84.41% and predicting the corresponding precipitation rate with a mean absolute error of less than 0.47 mm/h, solely based on measurement noise. Therefore, this research may contribute to a cost-effective solution for characterizing precipitation with a commercial Flash LiDAR sensor, which can be implemented as a lightweight vehicle software feature to issue advanced driver warnings, adapt driving dynamics, or serve as a data quality measure for adaptive data preprocessing and fusion.
引用
收藏
页数:31
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