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SLAM in the Field: An Evaluation of Monocular Mapping and Localization on Challenging Dynamic Agricultural Environment

机译:在该领域的抨击:对挑战动态农业环境的单眼测绘与本土化的评价

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This paper demonstrates a system capable of combining a sparse, indirect, monocular visual SLAM, with both offline and real-time Multi-View Stereo (MVS) reconstruction algorithms. This combination overcomes many obstacles encountered by autonomous vehicles or robots employed in agricultural environments, such as overly repetitive patterns, need for very detailed reconstructions, and abrupt movements caused by uneven roads. Furthermore, the use of a monocular SLAM makes our system much easier to integrate with an existing device, as we do not rely on a LiDAR (which is expensive and power consuming), or stereo camera (whose calibration is sensitive to external perturbation e.g. camera being displaced). To the best of our knowledge, this paper presents the first evaluation results for monocular SLAM, and our work further explores unsupervised depth estimation on this specific application scenario by simulating RGB-D SLAM to tackle the scale ambiguity, and shows our approach produces reconstructions that are helpful to various agricultural tasks. Moreover, we highlight that our experiments provide meaningful insight to improve monocular SLAM systems under agricultural settings.
机译:本文演示了一种能够将稀疏,间接,单眼视觉流动组合的系统,其中具有离线和实时多视图立体声(MVS)重建算法。这种组合克服了农业环境中的自主车辆或机器人所遇到的许多障碍,例如过度重复的模式,需要非常详细的重建,并且由不均匀的道路引起的突然移动。此外,使用单眼猛放使我们的系统更容易与现有设备集成,因为我们不依赖于LIDAR(这是昂贵且功耗)或立体相机(其校准对外部扰动敏感,例如相机流离失所)。据我们所知,本文介绍了单眼奴役的第一个评估结果,我们的工作进一步通过模拟RGB-D SLAM解决规模歧义来探讨了对该特定应用方案的无监督深度估计,并显示了我们的方法产生重建对各种农业任务有帮助。此外,我们强调我们的实验提供了有意义的洞察力,可以在农业环境下改善单眼血压系统。

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