PowerPoint slideshow navigation control with hand gestures using Hidden Markov Model method

C. Rahmad, A. Prasetyo, Riza Awwalul Baqy
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Abstract

Gesture is the easiest and most expressive way of communication between humans and computers, especially gestures that focus on hand and facial movements. Users can use simple gestures to communicate their ideas with a computer without interacting physically. One form of communication between users and machines is in the teaching and learning process in college. One of them is the way the speakers deliver material in the classroom. Most speakers nowadays make use of projectors that project PowerPoint slides from a connected laptop. In running the presentation, the speaker needs to move a slide from one slide to the next or to the previous slide. Therefore, a hand gesture recognition system is needed so it can implement the above interactions. In this study, a PowerPoint navigation control system was built. Digital imaging techniques use a combination of methods. The YCbCr threshold method is used to detect skin color. Furthermore, the morphological method is used to refine the detection results. Then the background subtraction method is used to detect moving objects. The classification method uses the Hidden Markov Model (HMM). With 526 hand images, the result shows that the accuracy of the confusion matrix is 74.5% and the sensitivity is 76.47%. From the accuracy and sensitivity values, it can be concluded that the Hidden Markov Model method can detect gestures quite well as a PowerPoint slide navigation control.
ppt幻灯片导航控制与手势使用隐马尔可夫模型方法
手势是人类和计算机之间最简单、最具表现力的交流方式,尤其是手部和面部动作的手势。用户可以使用简单的手势与计算机交流他们的想法,而无需进行物理交互。用户和机器之间交流的一种形式是在大学的教学过程中。其中之一是演讲者在课堂上传递材料的方式。现在,大多数演讲者都使用投影仪,从连接的笔记本电脑上投影PowerPoint幻灯片。在运行演示文稿时,演讲者需要将幻灯片从一张幻灯片移动到下一张或前一张幻灯片。因此,需要一个手势识别系统来实现上述交互。本研究构建了一个PowerPoint导航控制系统。数字成像技术使用多种方法的组合。采用YCbCr阈值法检测肤色。在此基础上,利用形态学方法对检测结果进行细化。然后采用背景减法检测运动目标。分类方法采用隐马尔可夫模型(HMM)。使用526张手图像,结果表明,该混淆矩阵的准确率为74.5%,灵敏度为76.47%。从精度和灵敏度值可以看出,隐马尔可夫模型方法可以很好地检测手势作为PowerPoint幻灯片导航控件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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13
审稿时长
24 weeks
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