17 October 2019 Road detection using cycle-consistent adversarial networks
Yucheng Wang, Juan Zhang, Hao Jiang, Zhijun Fang
Author Affiliations +
Abstract

Today, road detection is still a challenging task in intelligent driving. With the continuous improvement of computer vision, many methods of deep learning are used for road detection because they can achieve image features at a deeper level and discover road areas from raw RGB data. However, the method to detect the road areas accurately needs to be improved. We present a method that can extract the road area features and complete road detection tasks. Our method mainly includes the following points: (1) to introduce the cycle-consistent adversarial network to extract the road area features in a picture and complete image to image conversion and (2) to complete road detection by adding a new model and to improve the accuracy of detection. The results of our method are evaluated by uploading to the Karlsruhe Institute of Technology and Toyota Technological Institute road detection benchmark and named it as “road detection cycle-consistent adversarial networks.” Our method achieves an overall max F-measure of 88.63% and precision of 91.35%. In addition to high precision, our method also has a good robustness. Meanwhile, the accuracy for narrow road areas needs to be optimized in the future.

© 2019 SPIE and IS&T 1017-9909/2019/$28.00 © 2019 SPIE and IS&T
Yucheng Wang, Juan Zhang, Hao Jiang, and Zhijun Fang "Road detection using cycle-consistent adversarial networks," Journal of Electronic Imaging 28(5), 053021 (17 October 2019). https://doi.org/10.1117/1.JEI.28.5.053021
Received: 22 April 2019; Accepted: 17 September 2019; Published: 17 October 2019
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KEYWORDS
Roads

Gallium nitride

LIDAR

Visual process modeling

3D modeling

Image segmentation

RGB color model

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