ROMar 9, 2020

Low-viewpoint forest depth dataset for sparse rover swarms

arXiv:2003.04359v210 citations
AI Analysis

This dataset addresses the need for specialized training data for computer vision in forest environments, but it is incremental as it primarily provides a new resource rather than a novel method.

The authors tackled the problem of enabling autonomous navigation for small robot swarms in forests by creating a dataset of over 100k RGB images and corresponding depth maps from low-viewpoint perspectives, resulting in about 9700 processed image-depth pairs for public use.

Rapid progress in embedded computing hardware increasingly enables on-board image processing on small robots. This development opens the path to replacing costly sensors with sophisticated computer vision techniques. A case in point is the prediction of scene depth information from a monocular camera for autonomous navigation. Motivated by the aim to develop a robot swarm suitable for sensing, monitoring, and search applications in forests, we have collected a set of RGB images and corresponding depth maps. Over 100k images were recorded with a custom rig from the perspective of a small ground rover moving through a forest. Taken under different weather and lighting conditions, the images include scenes with grass, bushes, standing and fallen trees, tree branches, leafs, and dirt. In addition GPS, IMU, and wheel encoder data was recorded. From the calibrated, synchronized, aligned and timestamped frames about 9700 image-depth map pairs were selected for sharpness and variety. We provide this dataset to the community to fill a need identified in our own research and hope it will accelerate progress in robots navigating the challenging forest environment. This paper describes our custom hardware and methodology to collect the data, subsequent processing and quality of the data, and how to access it.

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