Detecting road surface wetness from audio: A deep learning approach

Type: Article

Publication Date: 2016-12-01

Citations: 47

DOI: https://doi.org/10.1109/icpr.2016.7900169

Download PDF

Abstract

We introduce a recurrent neural network architecture for automated road surface wetness detection from audio of tire-surface interaction. The robustness of our approach is evaluated on 785,826 bins of audio that span an extensive range of vehicle speeds, noises from the environment, road surface types, and pavement conditions including international roughness index (IRI) values from 25 in/mi to 1400 in/mi. The training and evaluation of the model are performed on different roads to minimize the impact of environmental and other external factors on the accuracy of the classification. We achieve an unweighted average recall (UAR) of 93.2% across all vehicle speeds including 0 mph. The classifier still works at 0 mph because the discriminating signal is present in the sound of other vehicles driving by.

Locations

  • arXiv (Cornell University) - View - PDF
  • OPUS (Augsburg University) - View - PDF

Similar Works

Action Title Year Authors
+ Detecting Road Surface Wetness from Audio: A Deep Learning Approach 2015 Irman Abdić
Lex Fridman
Erik Marchi
Daniel E. Brown
William W. Angell
Bryan Reimer
Björn SchĂŒller
+ Detecting Road Surface Wetness from Audio: A Deep Learning Approach 2015 Irman Abdić
Lex Fridman
Erik Marchi
Daniel Brown
William Angell
Bryan Reimer
Björn SchĂŒller
+ PDF Chat SmartRSD: An Intelligent Multimodal Approach to Real-Time Road Surface Detection for Safe Driving 2024 Adnan Tayeb
Mst Ayesha Khatun
Mohtasin Golam
Md Facklasur Rahaman
Ali Aouto
Oroceo Paul Angelo
Minseon Lee
Dong‐Seong Kim
Jae‐Min Lee
Jung-Hyeon Kim
+ Deep Convolutional Neural Network for Roadway Incident Surveillance Using Audio Data 2022 Zubayer Islam
Mohamed Abdel‐Aty
+ Enhanced Winter Road Surface Condition Monitoring with Computer Vision 2023 Risto Ojala
Alvari SeppÀnen
+ The AI Mechanic: Acoustic Vehicle Characterization Neural Networks 2022 Adam M. Terwilliger
Joshua Siegel
+ Improving the Environmental Perception of Autonomous Vehicles using Deep Learning-based Audio Classification 2022 Finley Walden
Sagar Dasgupta
Mizanur Rahman
Mhafuzul Islam
+ PDF Chat Lightweight Regression Model with Prediction Interval Estimation for Computer Vision-based Winter Road Surface Condition Monitoring 2024 Risto Ojala
Alvari SeppÀnen
+ A Computer Vision-assisted Approach to Automated Real-Time Road Infrastructure Management 2022 Philippe Heitzmann
+ Frequency of Interest-based Noise Attenuation Method to Improve Anomaly Detection Performance 2022 YeongHyeon Park
Myung Jin Kim
Won Seok Park
+ PDF Chat Frequency of Interest-based Noise Attenuation Method to Improve Anomaly Detection Performance 2023 YeongHyeon Park
Myung Jin Kim
Won Seok Park
+ Design of Efficient Deep Learning models for Determining Road Surface Condition from Roadside Camera Images and Weather Data 2020 Juan A. Cabrera
Mark Crowley
Guangyuan Pan
Liping Fu
+ Road Roughness Estimation Using Machine Learning 2021 M. Bajic
Shahrzad M. Pour
Asmus Skar
Matteo Pettinari
Eyal Levenberg
Tommy Sonne AlstrĂžm
+ PDF Chat Non-Compression Auto-Encoder for Detecting Road Surface Abnormality via Vehicle Driving Noise 2021 YeongHyeon Park
JongHee Jung
+ A Machine Learning Approach for Smartphone-based Sensing of Roads and Driving Style 2019 M. Ricardo Carlos
+ A MACHINE LEARNING APPROACH FOR SMARTPHONE-BASED SENSING OF ROADS AND DRIVING STYLE 2019 Carlos M. Loya
Manuel Ricardo
+ PDF Chat ETLNet: An Efficient TCN-BiLSTM Network for Road Anomaly Detection Using Smartphone Sensors 2024 M. Ansari
Rakshit Sandilya
Mohammed Javed
David Doermann
+ Non-Compression Auto-Encoder for Detecting Road Surface Abnormality via Vehicle Driving Noise. 2021 YeongHyeon Park
JongHee Jung
+ Real-Time Emergency Vehicle Detection using Mel Spectrograms and Regular Expressions 2023 Alberto Pacheco-GonzĂĄlez
Raymundo Torres
Raul Chacon
Isidro Robledo
+ PDF Chat Efficient <scp>Non‐Compression Auto‐Encoder</scp> for Driving Noise‐Based Road Surface Anomaly Detection 2022 YeongHyeon Park
JongHee Jung