Evaluating RGB+D hand posture detection methods for mobile 3D interaction

Daniel Fritz, Annette Mossel, H. Kaufmann
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引用次数: 3

Abstract

In mobile applications it is crucial to provide intuitive means for 2D and 3D interaction. A large number of techniques exist to support a natural user interface (NUI) by detecting the user's hand posture in RGB+D (depth) data. Depending on a given interaction scenario, each technique has its advantages and disadvantages. To evaluate the performance of the various techniques on a mobile device, we conducted a systematic study by comparing the accuracy of five common posture recognition approaches with varying illumination and background. To be able to perform this study, we developed a powerful software framework that is capable of processing and fusing RGB and depth data directly on a handheld device. Overall results reveal best recognition rate of posture detection for combined RGB+D data at the expense of update rate. Finally, to support users in choosing the appropriate technique for their specific mobile interaction task, we derived guidelines based on our study.
RGB+D手部姿态检测方法在移动3D交互中的应用
在移动应用程序中,为2D和3D交互提供直观的方法是至关重要的。通过在RGB+D(深度)数据中检测用户的手部姿势,存在大量支持自然用户界面(NUI)的技术。根据给定的交互场景,每种技术都有其优点和缺点。为了评估各种技术在移动设备上的性能,我们进行了一项系统研究,比较了五种常见的姿势识别方法在不同照明和背景下的准确性。为了进行这项研究,我们开发了一个强大的软件框架,能够直接在手持设备上处理和融合RGB和深度数据。总体结果表明,以牺牲更新速率为代价,RGB+D组合数据的姿态检测识别率最高。最后,为了支持用户为他们特定的移动交互任务选择合适的技术,我们根据我们的研究得出了指导方针。
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