Enhancing Infant Crying Detection with Gradient Boosting for Improved Emotional and Mental Health Diagnostics
Kyunghun Lee
Lauren M. Henry
Eleanor Hansen
Elizabeth Tandilashvili
Lauren S. Wakschlag
Elizabeth Norton
Daniel S. Pine
Melissa A. Brotman
Francisco Pereira

Abstract
Infant crying can serve as a crucial indicator of various physiological and emotional states. This paper introduces a comprehensive approach detecting infant cries within audio data. We integrate Wav2Vec with traditional audio features and employ Gradient Boosting Machines for cry classification. We validate our approach on a real world dataset, demonstrating significant performance improvements over existing methods.
View on arXivComments on this paper