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Design of a lane detection and departure warning system using functional-link-based neuro-fuzzy networks

机译:基于功能链接的神经模糊网络的车道检测与偏离预警系统设计

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As the high growth of the number of vehicles, the traffic accidents are becoming more and more serious in recent years. In order to avoid the drivers being in danger, an intelligent vision-based system should focus on the image contents of the front the camera setting under the rear-view mirror in the vehicle. In this paper, we present a functional-link-based neuro-fuzzy network (FLNFN) structure for lane detection and departure warning system application. The proposed FLNFN model uses a functional link neural network (FLNN) to the consequent part of the fuzzy rules. This study uses orthogonal polynomials and linearly independent functions in a functional expansion of the FLNN. Thus, the consequent part of the proposed FLNFN model is a nonlinear combination of input variables. An online learning algorithm, which consists of structure learning and parameter learning, is also presented. The structure learning depends on the entropy measure to determine the number of fuzzy rules. The parameter learning, based on the gradient descent method, can adjust the shape of the membership function and the corresponding weights of the FLNN. The lane detection method and the departure warning system proposed in this paper have been successfully evaluated on a PC platform of 3.2-GHz CPU, where the average frame-rate is up to 30fps.
机译:随着车辆数量的高速增长,近年来交通事故变得越来越严重。为了避免驾驶员处于危险中,基于智能视觉的系统应将重点放在车辆后视镜下方摄像头设置的前部图像内容上。在本文中,我们提出了一种基于功能链接的神经模糊网络(FLNFN)结构,用于车道检测和偏离预警系统的应用。所提出的FLNFN模型将功能链接神经网络(FLNN)用于模糊规则的后续部分。这项研究在FLNN的功能扩展中使用了正交多项式和线性独立的函数。因此,提出的FLNFN模型的结果部分是输入变量的非线性组合。提出了一种由结构学习和参数学习组成的在线学习算法。结构学习依赖于熵测度来确定模糊规则的数量。基于梯度下降法的参数学习可以调整隶属函数的形状和FLNN的相应权重。本文提出的车道检测方法和偏离警告系统已在3.2 GHz CPU的PC平台上成功评估,该PC的平均帧速率高达30fps。

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