Speed Bump Segmentation an Application of Conditional Generative Adversarial Network for Self-driving Vehicles

Sandip Omprakash Patil, V. S. Sajith Variyar, K. P. Soman
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引用次数: 10

Abstract

The intervention of AI technology and self-driving vehicles changed the transportation systems. The current self-driving vehicles demand reliable and accurate information from various functional modules. One of the major modules accommodated in vehicles is object detection and classification. In this paper a speed bump detection approach is developed for slow moving electric vehicle platform. The developed system uses monocular images as input and segment the speed bump using GAN network. The results obtained by new approach show that the GAN network is capable of segmenting various types of speed bumps with good accuracy. This new alternative approach shows the ability of GANs for speed bump detection application in self-driving vehicles.
条件生成对抗网络在自动驾驶汽车减速带分割中的应用
人工智能技术和自动驾驶汽车的介入改变了交通系统。目前的自动驾驶汽车需要各个功能模块提供可靠、准确的信息。车辆的主要模块之一是目标检测和分类。本文提出了一种针对低速电动车平台的减速带检测方法。该系统以单眼图像为输入,利用GAN网络对减速带进行分割。新方法得到的结果表明,GAN网络能够对不同类型的减速带进行分割,并且分割精度较高。这种新的替代方法显示了gan在自动驾驶汽车减速带检测中的应用能力。
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