光电工程, 2019, 46 (2): 180274, 网络出版: 2019-03-17  

基于全卷积神经网络与条件 随机场的车道识别方法

Lane recognition method based on fully convolution neural network and conditional random fields
叶子豪 1,2,*孙锐 1,2王慧慧 1,2
作者单位
1 合肥工业大学计算机与信息学院,安徽合肥 230009
2 工业安全与应急技术安徽省重点实验室,安徽合肥 230009
引用该论文

叶子豪, 孙锐, 王慧慧. 基于全卷积神经网络与条件 随机场的车道识别方法[J]. 光电工程, 2019, 46(2): 180274.

Ye Zihao, Sun Rui, Wang Huihui. Lane recognition method based on fully convolution neural network and conditional random fields[J]. Opto-Electronic Engineering, 2019, 46(2): 180274.

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叶子豪, 孙锐, 王慧慧. 基于全卷积神经网络与条件 随机场的车道识别方法[J]. 光电工程, 2019, 46(2): 180274. Ye Zihao, Sun Rui, Wang Huihui. Lane recognition method based on fully convolution neural network and conditional random fields[J]. Opto-Electronic Engineering, 2019, 46(2): 180274.

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