MetaSLAM/ALTO
ALTO (Aerial-view Large-scale Terrain-Oriented) dataset
This dataset provides aerial-view images specifically designed for training AI models to help drones and other unmanned aerial vehicles (UAVs) recognize their location and specific places they've visited. It takes in large-scale terrain imagery and outputs data suitable for deep learning models. UAV engineers, robotics researchers, and anyone developing autonomous navigation systems for drones would use this.
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Use this if you are developing or testing algorithms for drone visual navigation and place recognition in diverse outdoor environments.
Not ideal if you need a dataset for indoor navigation, ground-level robotics, or non-visual drone tasks.
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BSD-3-Clause
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Last pushed
Jun 20, 2022
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