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

机译:Ripple-GaN:带纹波车道线路检测网络和Wassersein Gan的车道线路检测

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摘要

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.
机译:随着人工智能技术的跨越式和界限,智能驾驶最近在研发中引起了大量的关注。在智能驾驶中,泳道线检测是一个基本而具有挑战性的任务,特别是在复杂的道路状况下。在本文中,我们提出了一个简单而有吸引力的网络,称为纹波车道线路检测网络(RILLD-Net),用于利用快速连接和梯度图,以有效地学习车道线特征。 riild-net可以处理大多数常见的车道线路场景。然后,为了解决诸如遮挡或复杂的车道线路的具有挑战性的场景,我们提出了一种更强大的网络,称为Ripple-GaN,通过整合罗德网,对抗Wassersein生成的对抗网络和多目标语义细分。实验表明,特别是对于复杂或模糊的车道线,Ripple-GaN可以向其他最先进的方法产生优异的检测性能。

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