TextureSight: Texture Detection for Routine Activity Awareness with Wearable Laser Speckle Imaging

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Abstract

Objects engaged by users' hands contain rich contextual information for their strong correlation with user activities. Tools such as toothbrushes and wipes indicate cleansing and sanitation, while mice and keyboards imply work. Much research has been endeavored to sense hand-engaged objects to supply wearables with implicit interactions or ambient computing with personal informatics. We propose TextureSight, a smart-ring sensor that detects hand-engaged objects by detecting their distinctive surface textures using laser speckle imaging on a ring form factor. We conducted a two-day experience sampling study to investigate the unicity and repeatability of the object-texture combinations across routine objects. We grounded our sensing with a theoretical model and simulations, powered it with state-of-the-art deep neural net techniques, and evaluated it with a user study. TextureSight constitutes a valuable addition to the literature for its capability to sense passive objects without emission of EMI or vibration and its elimination of lens for preserving user privacy, leading to a new, practical method for activity recognition and context-aware computing.

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APA

Wang, X., & Zhang, Y. (2024). TextureSight: Texture Detection for Routine Activity Awareness with Wearable Laser Speckle Imaging. Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies, 7(4). https://doi.org/10.1145/3631413

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