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Gesture-Based Adaptive Haptic Guidance: A Comparison of Discriminative and Generative Modeling Approaches

机译:基于手势的自适应触觉指导:判别式和生成式建模方法的比较

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摘要

This paper investigates the incorporation of hidden conditional random fields (HCRF) as a discriminative statistical modeling technique into adaptive haptic guidance (HG) for physical human-robot interaction (pHRI). In this gesture-based HG approach, the knowledge and experience of experts are modeled to improve the unpredictable motions of novice trainees in a virtual minimally invasive surgery (MIS) training task. The HCRF models are developed for automatic gesture recognition and segmentation as well as generating guidance forces. The forces are adaptively calculated in real time with respect to gestural similarities among user motions and the gesture models. The HCRF-based approach is compared with a hidden Markov model-based (HMM-based) method for capturing the gestures of the user and providing adaptive HG. The experimental results show that the HCRF, as a discriminative method, can outperform HMM, as a generative method, in terms of user performance.
机译:本文研究了将隐藏条件随机场(HCRF)作为一种判别性统计建模技术,用于人机交互(pHRI)的自适应触觉指导(HG)。在这种基于手势的HG方法中,专家的知识和经验经过建模,可以改善虚拟微创手术(MIS)培训任务中新手受训者的不可预测的动作。 HCRF模型是为自动手势识别和分段以及生成制导力而开发的。针对用户运动和手势模型之间的手势相似性,实时自适应地计算力。将基于HCRF的方法与基于隐式马尔可夫模型(基于HMM)的方法进行比较,以捕获用户的手势并提供自适应HG。实验结果表明,就用户性能而言,作为区分方法的HCRF可以优于作为生成方法的HMM。

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