Back to Search Start Over

Human I/O: Towards a Unified Approach to Detecting Situational Impairments

Authors :
Liu, Xingyu Bruce
Li, Jiahao Nick
Kim, David
Chen, Xiang 'Anthony'
Du, Ruofei
Publication Year :
2024

Abstract

Situationally Induced Impairments and Disabilities (SIIDs) can significantly hinder user experience in contexts such as poor lighting, noise, and multi-tasking. While prior research has introduced algorithms and systems to address these impairments, they predominantly cater to specific tasks or environments and fail to accommodate the diverse and dynamic nature of SIIDs. We introduce Human I/O, a unified approach to detecting a wide range of SIIDs by gauging the availability of human input/output channels. Leveraging egocentric vision, multimodal sensing and reasoning with large language models, Human I/O achieves a 0.22 mean absolute error and a 82% accuracy in availability prediction across 60 in-the-wild egocentric video recordings in 32 different scenarios. Furthermore, while the core focus of our work is on the detection of SIIDs rather than the creation of adaptive user interfaces, we showcase the efficacy of our prototype via a user study with 10 participants. Findings suggest that Human I/O significantly reduces effort and improves user experience in the presence of SIIDs, paving the way for more adaptive and accessible interactive systems in the future.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2403.04008
Document Type :
Working Paper
Full Text :
https://doi.org/10.1145/3613904.3642065