基于可见光和红外图像的夜间交通场景语义分割算法

Xiaona Xie, Zhiyong Xu, Jiang Tao, Jianying Yuan, Sidong Wu
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引用次数: 1

摘要

目前,针对智能驾驶车辆的语义分割算法有很多,但大多只适用于光照条件好的场景。为了解决低照度下的场景分割问题,提出了一种结合可见光和红外图像的语义分割算法。该算法设计了两个并行编码器作为图像的输入,解码器将融合后的图像输出与编码器进行分割。该模型基于ResNet算法,在每个分支中使用残差关注模块对多层通道的空间特征进行挖掘和增强,提取图像信息。实验是在公开的热红外和可见光数据集上进行的。结果表明,本文提出的算法在交通环境的语义分割中优于仅使用可见图像的算法。
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Semantic Segmentation Algorithm for Night Traffic Scene Based on Visible and Infrared Images
At present, there are many semantic segmentation algorithms with excellent performance for intelligent driving vehicles, but most of them are only work well on scenes with good illumination. In order to solve the problem of scene segmentation under low illumination, this paper proposes a novel semantic segmentation algorithm which combines visible and infrared images. In this algorithm, two parallel encoders are designed as the input of the image, and the decoder divides the fused image output from the encoder. The model is based on ResNet algorithm, and the residual attention module is used in each branch to mine and enhance the spatial features of multilevel channels to extract image information. Experiments are carried out on publicly available thermal infrared and visible data sets. The results show that the algorithm proposed in this paper is superior to the algorithm using only visible images in semantic segmentation of traffic environment.
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