Segmentation-based autonomous navigation has recently been proposed as a promising methodology to guide robotic platforms through crop rows without requiring precise GPS localization. However, existing methods are limited to scenarios where the centre of the row can be identified thanks to the sharp distinction between the plants and the sky. However, GPS signal obstruction mainly occurs in the case of tall, dense vegetation, such as high tree rows and orchards. In this work, we extend the segmentation-based robotic guidance to those scenarios where canopies and branches occlude the sky and hinder the usage of GPS and previous methods, increasing the overall robustness and adaptability of the control algorithm. Extensive experimentation on several realistic simulated tree fields and vineyards demonstrates the competitive advantages of the proposed solution.
翻译:基于分割的自主导航最近被提出作为一种有前途的方法来引导机器人平台穿过作物行,而不需要精确的GPS定位。然而,现有方法仅限于可以通过植物和天空之间锐利的差别识别出行中心的情况。然而,GPS信号阻塞主要发生在高树行和果园等高密度植被的情况下。在这项工作中,我们将基于分割的机器人导引扩展到那些遮挡天空并阻碍GPS和先前方法使用的情况,从而增加了控制算法的整体鲁棒性和适应性。对几个逼真的模拟树园和葡萄园进行了大量实验,证明了所提出的解决方案的竞争优势。