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WhAM: Towards A Translative Model of Sperm Whale Vocalization

About

Sperm whales communicate in short sequences of clicks known as codas. We present WhAM (Whale Acoustics Model), the first transformer-based model capable of generating synthetic sperm whale codas from any audio prompt. WhAM is built by finetuning VampNet, a masked acoustic token model pretrained on musical audio, using 10k coda recordings collected over the past two decades. Through iterative masked token prediction, WhAM generates high-fidelity synthetic codas that preserve key acoustic features of the source recordings. We evaluate WhAM's synthetic codas using Fr\'echet Audio Distance and through perceptual studies with expert marine biologists. On downstream classification tasks including rhythm, social unit, and vowel classification, WhAM's learned representations achieve strong performance, despite being trained for generation rather than classification. Our code is available at https://github.com/Project-CETI/wham

Orr Paradise, Pranav Muralikrishnan, Liangyuan Chen, Hugo Flores Garc\'ia, Bryan Pardo, Roee Diamant, David F. Gruber, Shane Gero, Shafi Goldwasser• 2025

Related benchmarks

TaskDatasetResultRank
Vowel ClassificationSperm whale coda dataset 2025 (test)
Accuracy85.2
6
DetectionSperm whale coda dataset (test)
Accuracy91.3
6
Rhythm ClassificationSperm whale coda dataset (test)
Accuracy87.4
6
Social Unit ClassificationSperm whale coda dataset (test)
Accuracy70.5
6
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