基于流模型的人机交互人机手势识别

Lanmiao Liu, Chuang Yu, Siyang Song, Zhidong Su, A. Tapus
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引用次数: 0

摘要

基于人体骨骼的手势分类在社交机器人中占有主导地位。学习各种基于人体骨骼的手势可以帮助机器人在自然的人机交互(HRI)中以适当的方式持续交互。在本文中,我们提出了一种基于flow的模型来对骨骼数据进行人体手势动作分类。我们的端到端模型可以在不重新训练模型的情况下从噪声数据中扩展手势识别标签的多样性,而不是使用重新训练的模型从噪声数据中推断新的人体骨骼动作。首先,我们的模型专注于检测五种人类手势动作(即,加油,右上,左上,拥抱和噪声随机动作)。我们的在线人体手势识别系统的准确率与离线系统一样高。同时,在前四个动作中,两者都达到了100%的准确率。我们提出的方法在不需要再训练的情况下对新的人体手势动作进行更有效的推断,对噪声随机动作的推断准确率达到90%左右。手势识别系统已被应用于机器人对人类手势的反应,有望促进自然的人机交互。
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Human Gesture Recognition with a Flow-based Model for Human Robot Interaction
Human skeleton-based gesture classification plays a dominant role in social robotics. Learning the variety of human skeleton-based gestures can help the robot to continuously interact in an appropriate manner in a natural human-robot interaction (HRI). In this paper, we proposed a Flow-based model to classify human gesture actions with skeletal data. Instead of inferring new human skeleton actions from noisy data using a retrained model, our end-to-end model can expand the diversity of labels for gesture recognition from noisy data without retraining the model. At first, our model focuses on detecting five human gesture actions (i.e., come on, right up, left up, hug, and noise-random action). The accuracy of our online human gesture recognition system is as well as the offline one. Meanwhile, both attain 100% accuracy among the first four actions. Our proposed method is more efficient for inference of new human gesture action without retraining, which acquires about 90% accuracy for noise-random action. The gesture recognition system has been applied to the robot's reaction toward the human gesture, which is promising to facilitate a natural human-robot interaction.
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来源期刊
ACM Transactions on Human-Robot Interaction
ACM Transactions on Human-Robot Interaction Computer Science-Artificial Intelligence
CiteScore
7.70
自引率
5.90%
发文量
65
期刊介绍: ACM Transactions on Human-Robot Interaction (THRI) is a prestigious Gold Open Access journal that aspires to lead the field of human-robot interaction as a top-tier, peer-reviewed, interdisciplinary publication. The journal prioritizes articles that significantly contribute to the current state of the art, enhance overall knowledge, have a broad appeal, and are accessible to a diverse audience. Submissions are expected to meet a high scholarly standard, and authors are encouraged to ensure their research is well-presented, advancing the understanding of human-robot interaction, adding cutting-edge or general insights to the field, or challenging current perspectives in this research domain. THRI warmly invites well-crafted paper submissions from a variety of disciplines, encompassing robotics, computer science, engineering, design, and the behavioral and social sciences. The scholarly articles published in THRI may cover a range of topics such as the nature of human interactions with robots and robotic technologies, methods to enhance or enable novel forms of interaction, and the societal or organizational impacts of these interactions. The editorial team is also keen on receiving proposals for special issues that focus on specific technical challenges or that apply human-robot interaction research to further areas like social computing, consumer behavior, health, and education.
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