Vision based solutions for the localization of vehicles have become popular recently. We employ an image retrieval based visual localization approach. The database images are kept with GPS coordinates and the location of the retrieved database image serves as an approximate position of the query image. We show that localization can be performed via descriptors solely extracted from semantically segmented images. It is reliable especially when the environment is subjected to severe illumination and seasonal changes. Our experiments reveal that the localization performance of a semantic descriptor can increase up to the level of state-of-the-art RGB image based methods.
翻译:最近,基于视觉的车辆定位解决方案变得很受欢迎。我们采用了基于图像检索的视觉定位方法。数据库图像以全球定位系统坐标保存,检索的数据库图像的位置是查询图像的近似位置。我们显示,仅从语义分割图像中提取的描述符可以进行本地化。特别是在环境受到严重照明和季节性变化的影响时。我们的实验显示,语义描述符的本地化性能可以提高到以RGB图像为基础的最新水平。