Cross-view image matches have been widely explored on terrestrial image localization using aerial images from drones or satellites. This study expands the cross-view image match idea and proposes a cross-domain and cross-view localization framework. The method identifies the correlation between color aerial images and underwater acoustic images to improve the localization of underwater vehicles that travel in partially structured environments such as harbors and marinas. The approach is validated on a real dataset acquired by an underwater vehicle in a marina. The results show an improvement in the localization when compared to the dead reckoning of the vehicle.
翻译:利用无人驾驶飞机或卫星的航空图像,在地面图像定位上广泛探索了交叉图像匹配情况,扩大了交叉图像匹配概念,并提出了一个跨域和交叉视图本地化框架。该方法确定了彩色航空图像与水下声学图像之间的相互关系,以改善在港口和码头等部分结构化环境中行驶的水下车辆的本地化。该方法在水下车辆在船坞获得的真实数据集上得到验证。结果显示,与对车辆进行死亡清点相比,本地化情况有所改善。