MetaCropFollow: Few-Shot Adaptation with Meta-Learning for Under-Canopy Navigation
Autonomous under-canopy navigation faces additional challenges compared to over-canopy settings - for example the tight spacing between the crop rows, degraded GPS accuracy and excessive clutter. Keypoint-based visual navigation has been shown to perform well in these conditions, however the differe...
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Zusammenfassung: | Autonomous under-canopy navigation faces additional challenges compared to
over-canopy settings - for example the tight spacing between the crop rows,
degraded GPS accuracy and excessive clutter. Keypoint-based visual navigation
has been shown to perform well in these conditions, however the differences
between agricultural environments in terms of lighting, season, soil and crop
type mean that a domain shift will likely be encountered at some point of the
robot deployment. In this paper, we explore the use of Meta-Learning to
overcome this domain shift using a minimal amount of data. We train a
base-learner that can quickly adapt to new conditions, enabling more robust
navigation in low-data regimes. |
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DOI: | 10.48550/arxiv.2411.14092 |