Litcius/Paper detail

AO-Finger: Hands-free Fine-grained Finger Gesture Recognition via Acoustic-Optic Sensor Fusing

Chenhan Xu, Bing Zhou, Gurunandan Krishnan, Shree K. Nayar

202324 citationsDOI

Abstract

Finger gesture recognition is gaining great research interest for wearable device interactions such as smartwatches and AR/VR headsets. In this paper, we propose a hands-free fine-grained finger gesture recognition system AO-Finger based on acoustic-optic sensor fusing. Specifically, we design a wristband with a modified stethoscope microphone and two high-speed optic motion sensors to capture signals generated from finger movements. We propose a set of natural, inconspicuous and effortless micro finger gestures that can be reliably detected from the complementary signals from both sensors. We design a multi-modal CNN-Transformer model for fast gesture recognition (flick/pinch/tap), and a finger swipe contact detection model to enable fine-grained swipe gesture tracking. We built a prototype which achieves an overall accuracy of 94.83% in detecting fast gestures and enables fine-grained continuous swipe gestures tracking. AO-Finger is practical for use as a wearable device and ready to be integrated into existing wrist-worn devices such as smartwatches.

Topics & Concepts

SwIPeGestureComputer scienceGesture recognitionWearable computerArtificial intelligenceMicrophoneComputer visionSmartwatchAccelerometerMotion captureSpeech recognitionEmbedded systemMotion (physics)Computer networkOperating systemSound pressureTelecommunicationsHand Gesture Recognition SystemsTactile and Sensory InteractionsSpeech and Audio Processing
AO-Finger: Hands-free Fine-grained Finger Gesture Recognition via Acoustic-Optic Sensor Fusing | Litcius