TweetyBERT

"A new machine learning model, TweetyBERT, automatically segments and classifies canary vocalizations with expert-level accuracy, offering a scalable platform for neuroscience, providing insights into the neural basis of how the brain learns and produces language, and offering potential applications for understanding animal vocalization more broadly. 


"'Current AI methods for analyzing animal vocalizations require human-labeled training data, a slow and labor-intensive process. We developed TweetyBERT, a self-supervised neural network for analyzing birdsongs. It can rapidly process unlabeled vocal recordings, identify communication units, and annotate sequences,' says Tim Gardner, associate professor of bioengineering at the University of Oregon's Knight Campus."



Comments

Popular posts from this blog

Hamza Chaudhry

When their AI chums have Bob's data

Supporting Artistes (SAs)