Domain‐adapted driving scene understanding with uncertainty‐aware and diversified generative adversarial networks

Author:

Hua Yining1,Sui Jie2,Fang Hui3ORCID,Hu Chuan4,Yi Dewei1ORCID

Affiliation:

1. Department of Computing Science University of Aberdeen Aberdeen UK

2. School of Psychology University of Aberdeen Aberdeen UK

3. Department of Computer Science Loughborough University Loughborough UK

4. School of Mechanical Engineering Shanghai Jiao Tong University Shanghai China

Abstract

AbstractAutonomous vehicles are required to operate in an uncertain environment. Recent advances in computational intelligence techniques make it possible to understand driving scenes in various environments by using a semantic segmentation neural network, which assigns a class label to each pixel. It requires massive pixel‐level labelled data to optimise the network. However, it is challenging to collect sufficient data and labels in the real world. An alternative solution is to obtain synthetic dense pixel‐level labelled data from a driving simulator. Although the use of synthetic data is a promising way to alleviate the labelling problem, models trained with virtual data cannot generalise well to realistic data due to the domain shift. To fill this gap, the authors propose a novel uncertainty‐aware generative ensemble method. In particular, ensembles are obtained from different optimisation objectives, training iterations, and network initialisation so that they are complementary to each other to produce reliable predictions. Moreover, an uncertainty‐aware ensemble scheme is developed to derive fused prediction by considering the uncertainty from ensembles. Such a design can make better use of the strengths of ensembles to enhance adapted segmentation performance. Experimental results demonstrate the effectiveness of our method on three large‐scale datasets.

Publisher

Institution of Engineering and Technology (IET)

Subject

Artificial Intelligence,Computer Networks and Communications,Computer Vision and Pattern Recognition,Human-Computer Interaction,Information Systems

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