RGB颜色模型
分割
计算机科学
人工智能
计算机视觉
卷积神经网络
恶劣天气
图像分割
能见度
尺度空间分割
模式识别(心理学)
地理
气象学
作者
Qishen Ha,Kohei Watanabe,Takumi Karasawa,Yoshitaka Ushiku,Tatsuya Harada
出处
期刊:Intelligent Robots and Systems
日期:2017-09-01
被引量:279
标识
DOI:10.1109/iros.2017.8206396
摘要
This work addresses the semantic segmentation of images of street scenes for autonomous vehicles based on a new RGB-Thermal dataset, which is also introduced in this paper. An increasing interest in self-driving vehicles has brought the adaptation of semantic segmentation to self-driving systems. However, recent research relating to semantic segmentation is mainly based on RGB images acquired during times of poor visibility at night and under adverse weather conditions. Furthermore, most of these methods only focused on improving performance while ignoring time consumption. The aforementioned problems prompted us to propose a new convolutional neural network architecture for multi-spectral image segmentation that enables the segmentation accuracy to be retained during real-time operation. We benchmarked our method by creating an RGB-Thermal dataset in which thermal and RGB images are combined. We showed that the segmentation accuracy was significantly increased by adding thermal infrared information.
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