Acoustic scattering AI for non-invasive object classifications: A case study on hair assessment
This provides a privacy-preserving, non-contact alternative to visual classification for industries like cosmetics or healthcare, though it is incremental as it applies existing AI methods to a new domain.
The paper tackled non-invasive object classification using acoustic scattering, specifically for hair assessment, achieving nearly 90% accuracy in classifying hair type and moisture by fine-tuning a self-supervised model.
This paper presents a novel non-invasive object classification approach using acoustic scattering, demonstrated through a case study on hair assessment. When an incident wave interacts with an object, it generates a scattered acoustic field encoding structural and material properties. By emitting acoustic stimuli and capturing the scattered signals from head-with-hair-sample objects, we classify hair type and moisture using AI-driven, deep-learning-based sound classification. We benchmark comprehensive methods, including (i) fully supervised deep learning, (ii) embedding-based classification, (iii) supervised foundation model fine-tuning, and (iv) self-supervised model fine-tuning. Our best strategy achieves nearly 90% classification accuracy by fine-tuning all parameters of a self-supervised model. These results highlight acoustic scattering as a privacy-preserving, non-contact alternative to visual classification, opening huge potential for applications in various industries.