Litcius/Paper detail

Hand Tracking and Gesture Recognition by Multiple Contactless Sensors: A Survey

Eleni Theodoridou, Luigi Cinque, Filippo Mignosi, Giuseppe Placidi, Matteo Polsinelli, João Manuel R. S. Tavares, Matteo Spezialetti

2022IEEE Transactions on Human-Machine Systems28 citationsDOIOpen Access PDF

Abstract

Hand tracking and gesture recognition are fundamental in a multitude of applications. Various sensors have been used for this purpose, however, all monocular vision systems face limitations caused by occlusions. Wearable equipment overcome said limitations, although deemed impractical in some cases. Using more than one sensor provides a way to overcome this problem, but necessitates more complicated designs. In this work, we aim to highlight contemporary methods used for hand tracking and gesture recognition by collecting publications of systems developed in the last decade, that employ contactless devices as RGB cameras, IR, and depth sensors, along with some preceding pillar works. Additionally, we briefly present common steps, techniques, and basic algorithms used during the process of developing modern hand tracking and gesture recognition systems and, finally, we derive the trend for the next future.

Topics & Concepts

GestureComputer scienceGesture recognitionComputer visionArtificial intelligenceWearable computerProcess (computing)Tracking (education)Human–computer interactionTracking systemMonocularEmbedded systemFilter (signal processing)PedagogyPsychologyOperating systemHand Gesture Recognition SystemsRobotics and Automated SystemsGaze Tracking and Assistive Technology
Hand Tracking and Gesture Recognition by Multiple Contactless Sensors: A Survey | Litcius