TEDNet: Twin Encoder Decoder Neural Network for 2D Camera and LiDAR Road Detection

Author:

Bayón-Gutiérrez Martín1,García-Ordás María Teresa2,Alaiz Moretón Héctor3,Aveleira-Mata Jose4,Rubio-Martín Sergio5,Benítez-Andrades José Alberto6

Affiliation:

1. SECOMUCI Research Group , Department of Electric, Systems and Automatics Engineering, Universidad de León, 24008 León, Spain, martin.bayon@unileon.es

2. SECOMUCI Research Group , Department of Electric, Systems and Automatics Engineering, Universidad de León, 24008 León, Spain, mgaro@unileon.es

3. SECOMUCI Research Group , Department of Electric, Systems and Automatics Engineering, Universidad de León, 24008 León, Spain, hector.moreton@unileon.es

4. SECOMUCI Research Group , Department of Electric, Systems and Automatics Engineering, Universidad de León, 24008 León, Spain, jose.aveleira@unileon.es

5. SALBIS Research Group , Department of Electric, Systems and Automatics Engineering, Universidad de León, 24008 León, Spain, srubim00@estudiantes.unileon.es

6. SALBIS Research Group , Department of Electric, Systems and Automatics Engineering, Universidad de León, 24008 León, Spain, jbena@unileon.es

Abstract

Abstract Robust road surface estimation is required for autonomous ground vehicles to navigate safely. Despite it becoming one of the main targets for autonomous mobility researchers in recent years, it is still an open problem in which cameras and LiDAR sensors have demonstrated to be adequate to predict the position, size and shape of the road a vehicle is driving on in different environments. In this work, a novel Convolutional Neural Network model is proposed for the accurate estimation of the roadway surface. Furthermore, an ablation study has been conducted to investigate how different encoding strategies affect model performance, testing 6 slightly different neural network architectures. Our model is based on the use of a Twin Encoder–Decoder Neural Network (TEDNet) for independent camera and LiDAR feature extraction and has been trained and evaluated on the Kitti–Road dataset. Bird’s Eye View projections of the camera and LiDAR data are used in this model to perform semantic segmentation on whether each pixel belongs to the road surface. The proposed method performs among other state-of-the-art methods and operates at the same frame rate as the LiDAR and cameras, so it is adequate for its use in real-time applications.

Publisher

Oxford University Press (OUP)

Reference30 articles.

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2. Roadway detection using convolutional neural network through camera and lidar data;Bayón-Gutiérrez,2022

3. Lidar—camera fusion for road detection using fully convolutional neural networks;Caltagirone;Robotics and Autonomous Systems,2018

4. Progressive lidar adaptation for road detection;Chen;IEEE/CAA Journal of Automatica Sinica,2019

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