Episode

Primate Poses

Podcast
Data Skeptic
Published
Jul 31, 2024
Duration seconds
1977
Processing state
failed
Canonical source
https://dataskeptic.com/blog/episodes/2024/primate-poses
Audio
https://pscrb.fm/rss/p/mgln.ai/e/35/traffic.libsyn.com/secure/dataskeptic/primate-poses.mp3?dest-id=201630
JSON
/v1/public/podcasts/data-skeptic/episodes/primate-poses
Markdown
/podcast/data-skeptic/primate-poses.md

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Summary

During this season we have talked with researchers working to utilize machine learning for behavioral observations. In previous episodes, you have heard about the software people like Richard use, but you haven't heard much from scientists modifying and using these tools for specific research cases. PhD student, Richard Vogg, is working with multi-camera set-ups to track lemurs and macaques solving puzzle boxes in the wild. His work is part of a larger movement to automate behavioral analyses of video data. Listen in and learn why this tech is useful and why multi-camera setups are a good idea for more reliably identifying poses and individual animals.