Vision-based Hand Gesture Recognition for Human-Computer Interaction using MobileNetV2
Hermann Baumgartl, Daniel Sauter, Christian Schenk, Cem Atik, Ricardo Buettner
- Year
- 2021
- Citations
- 13
Abstract
In recent years, the demand for gesture recognition has increased enormously due to many applications such as computer games, human-robot interaction, assistance systems, sports, sign language interpreters, and e-commerce. The recognition of hand gestures is one of the most important gesture recognition methods. With simple hand gestures, devices in the smart home area (TV, radio, vacuum cleaner robots, etc.) should be easier to operate. Our method is based on a convolutional neural network, or more precisely on MobileNetV2. With this lean and fast network, we have been able to achieve an accuracy of 99.96 percent in recognition of hand gestures, so that in the future, we will be able to offer an application in the field of Human-Computer Interaction to interact more easily with the ever-increasing number of technologies in everyday life.
Keywords
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