基于模糊推理系统的HOAP-2机器人手势识别与生成

R. Doriya, Parikshit Agarwal, P. Chakraborty, G. Nandi
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引用次数: 2

摘要

由于HOAP系列机器人与人体结构相似,因此期望HOAP机器人能够与其他机器人进行实时交互。然而,在实时学习、识别和交互方面,它已经被证明是困难的。本文提出了一种模糊推理系统(FIS),该系统通过分割和运动基元来学习手势,在学习阶段通过建立基于规则的系统来识别手势,并利用现实世界的人机交互模式为HOAP-2机器人生成交互式手势。我们还在手势学习过程中加入了预处理元素,这有助于更好的模糊规则生成和运动识别器的识别。最后,在交互手势生成阶段,引入一些交互参数以生成最佳可能响应。我们用HOAP-2机器人的几个实时交互手势验证了所提模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gesture Recognition and Generation for HOAP-2 Robots by Fuzzy Inference System
Since HOAP series robots resemble human body structure, a HOAP robot is expected to interact with others in real-time. However, it has proven hard in terms of learning, recognition, and interaction in real-time. In this paper a Fuzzy Inference System (FIS) is proposed, which learns gestures with segmentation and motion primitives, recognize gestures with created rule-based system in learning phase, and generate interactive gesture for HOAP-2 robot using real-world human interaction patterns. We also have a pre-processing element during gesture learning, which helps in better fuzzy rule generation and recognition with motion recognizer. Finally, at interactive gesture generation phase, some interactive parameters are incorporated to generate best possible response. We demonstrate the validity of proposed model with several interactive gestures of HOAP-2 robot in real-time.
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