image
imagewidth (px)
240
240
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1
forward
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right
int64
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0

Image Dataset of Cyberzoo at Delft University of Technology

This dataset includes images taken in the Cyberzoo in the aircraft hall of the Delft University of Technology. The dataset consists of both real images (82%) and simulator images (18%).

Dataset Details

Dataset Description

This dataset was collected throughout multiple testing sessions at the Cyberzoo, both while actually flying and handheld. The labeling of the data has been performed using monocular depth maps, generated using Depth-Anything. The exact labeling process has been explained in this notebook.

Uses

This dataset can be used to train Convolutional Neural Networks for obstacle avoidance of Micro Air Vehicles in the Cyberzoo of Delft University of Technology. For the entire training pipeline, please go this this repository.

Dataset Structure

The dataset consists of a train set (90% of the data) and a test set (10% of the data). Each image has its label embedded in the metadata, the possible labels are: "left", "forward", "right", corresponding to the direction the drone should rotate or fly in.

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