Using physical interactive devices like mouse and keyboards hinders naturalistic human-machine interaction and increases the probability of surface contact during a pandemic. Existing gesture-recognition systems do not possess user authentication, making them unreliable. Static gestures in current gesture-recognition technology introduce long adaptation periods and reduce user compatibility. Our technology places a strong emphasis on user recognition and safety. We use meaningful and relevant gestures for task operation, resulting in a better user experience. This paper aims to design a robust, face-verification-enabled gesture recognition system that utilizes a graphical user interface and primarily focuses on security through user recognition and authorization. The face model uses MTCNN and FaceNet to verify the user, and our LSTM-CNN architecture for gesture recognition, achieving an accuracy of 95% with five classes of gestures. The prototype developed through our research has successfully executed context-dependent tasks like save, print, control video-player operations and exit, and context-free operating system tasks like sleep, shut-down, and unlock intuitively. Our application and dataset are available as open source.
翻译:使用像鼠标和键盘这样的物理互动装置会阻碍自然的人体机器互动,增加在大流行病期间表面接触的概率。现有的手势识别系统没有用户认证,因此不可靠。当前手势识别技术中的静态手势会引入长期的适应期,降低用户兼容性。我们的技术非常强调用户的识别和安全。我们使用有意义的相关手势来开展任务操作,从而获得更好的用户经验。本文旨在设计一个强大的、面部验证的手势识别系统,该系统利用图形用户界面,主要通过用户识别和授权来关注安全。面部模型使用MTCNN和FaceNet来验证用户,以及我们的LSTM-CNN结构来进行手势识别,实现95%的准确性和五类手势。通过我们的研究开发的原型成功地执行了与背景相关的任务,如保存、打印、控制视频播放操作和退出,以及无背景操作系统任务,如睡眠、关闭和直线解锁。我们的应用程序和数据集作为开放源。