3D gesture recognition applying long short-term memory and contextual knowledge in a CAVE

Autor: Björn Schuller, Luis Roalter, Matthias Kranz, Dejan Arsićc, Gerhard Rigoll, Florian Eyben, Moritz Kaiser, Martin Wöllmer
Jazyk: angličtina
Rok vydání: 2020
Předmět:
Zdroj: MPVA@MM
Popis: Virtual reality applications are emerging into various regions of research and entertainment. Although visual and acoustic capabilities are already quite impressive, a wide range of users still criticizes the user interface. Frequently complex and very sensitive input devices are being used, although simple gestures would be preferred. While gesture recognition systems are quite common, see Nintendo's Wii mote, a CAVE has further challenges, as the person can be located in any random position and the gestures are not being performed related to a common fixpoint. Applying an infrared tracking system it is possible to reliably locate the hand and compute 3D trajectories. These are then further analyzed with a Long Short-Term Memory approach, which is able to model sequences of variable length with a higher reliability than HMMs.
Databáze: OpenAIRE