Visual Teach and Repeat has shown relative navigation is a robust and efficient solution for autonomous vision-based path following in difficult environments. Adding additional absolute sensors such as Global Navigation Satellite Systems (GNSS) has the potential to expand the domain of Visual Teach and Repeat to environments where the ability to visually localize is not guaranteed. Our method of lazy mapping and delaying estimation until a path-tracking error is needed avoids the need to estimate absolute states. As a result, map optimization is not required and paths can be driven immediately after being taught. We validate our approach on a real robot through an experiment in a joint indoor-outdoor environment comprising 3.5km of autonomous route repeating across a variety of lighting conditions. We achieve smooth error signals throughout the runs despite large sections of dropout for each sensor.
翻译:视觉教学和重复显示,相对导航是紧凑而高效的解决方案,有助于在困难的环境中遵循自主的视觉道路。加上诸如全球导航卫星系统(GNSS)等额外的绝对传感器,有可能将视觉教学和重复的域扩大到无法保证视觉定位能力的环境。我们的懒惰绘图和推迟估计直到需要路径跟踪错误时,就不必估计绝对状态。因此,不需要优化地图,在教授之后可以立即驱动路径。我们通过在室内外联合环境中进行试验,在各种照明条件下重复使用3.5公里的自主线路,从而验证我们的方法。我们在整个运行过程中都取得了顺利的错误信号,尽管每个传感器都有大量的辍学现象。