Litcius/Paper detail

Ripple-GAN: Lane Line Detection With Ripple Lane Line Detection Network and Wasserstein GAN

Youcheng Zhang, Zongqing Lu, Dongdong Ma, Jing‐Hao Xue, Qingmin Liao

2020IEEE Transactions on Intelligent Transportation Systems77 citationsDOIOpen Access PDF

Abstract

With artificial intelligence technology being advanced by leaps and bounds, intelligent driving has attracted a huge amount of attention recently in research and development. In intelligent driving, lane line detection is a fundamental but challenging task particularly under complex road conditions. In this paper, we propose a simple yet appealing network called Ripple Lane Line Detection Network (RiLLD-Net), to exploit quick connections and gradient maps for effective learning of lane line features. RiLLD-Net can handle most common scenes of lane line detection. Then, in order to address challenging scenarios such as occluded or complex lane lines, we propose a more powerful network called Ripple-GAN, by integrating RiLLD-Net, confrontation training of Wasserstein generative adversarial networks, and multi-target semantic segmentation. Experiments show that, especially for complex or obscured lane lines, Ripple-GAN can produce a superior detection performance to other state-of-the-art methods.

Topics & Concepts

Computer scienceRippleLine (geometry)Artificial intelligenceTask (project management)SegmentationExploitReal-time computingEngineeringMathematicsVoltageSystems engineeringComputer securityElectrical engineeringGeometryAutonomous Vehicle Technology and SafetyAdvanced Neural Network ApplicationsImage and Object Detection Techniques