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DeepTouch: Enabling Touch Interaction in Underwater Environments by Learning Touch-Induced Inertial Motions

Kang-Won Lee, Seung-Chan Kim, Soo‐Chul Lim

Year
2022
Citations
12

Abstract

Sensing performance of capacitive touch sensor is significantly degraded in electronically harsh environments, for example, underwater. In particular, a capacitive touch sensor used in a general mobile phone cannot recognize a touch in the underwater. Based on the observation that contact between two physical bodies (e.g., fingertip and display screen) induces object motion, although tiny, we propose a novel touch interface system that learns multivariate sequential signals to recognize the touched position while underwater. To that end, we first collected multivariate sensor data utilizing a commercial robot arm system to obtain sufficient amount of touch data in the underwater condition. Then, we trained deep neural network models using the collected data along with predefined touch regions in a supervised fashion. The experimental results obtained demonstrated higher recognition performances with overall accuracy of 96.74%. We conclude this paper by discussing the issues and highlighting future research directions.

Keywords

UnderwaterArtificial intelligenceCapacitive sensingComputer scienceComputer visionInertial measurement unitProximity sensorInterface (matter)Tactile sensorObject (grammar)

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