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Unobtrusive Inference of Affective States in Virtual Rehabilitation from Upper Limb Motions: A Feasibility Study

机译:从上肢动作虚拟康复中的情感状态不引人注意推断:可行性研究

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Virtual rehabilitation environments may afford greater patient personalization if they could harness the patient's affective state. Four states: anxiety, pain, engagement and tiredness (either physical or psychological), were hypothesized to be inferable from observable metrics of hand location and gripping strength-relevant for rehabilitation. Contributions are; (a) multiresolution classifier built from Semi-Naive Bayesian classifiers, and (b) establishing predictive relations for the considered states from the motor proxies capitalizing on the proposed classifier with recognition levels sufficient for exploitation. 3D hand locations and gripping strength streams were recorded from 5 post-stroke patients whilst undergoing motor rehabilitation therapy administered through virtual rehabilitation along 10 sessions over 4 weeks. Features from the streams characterized the motor dynamics, while spontaneous manifestations of the states were labelled from concomitant videos by experts for supervised classification. The new classifier was compared against baseline support vector machine (SVM) and random forest (RF) with all three exhibiting comparable performances. Inference of the aforementioned states departing from chosen motor surrogates appears feasible, expediting increased personalization of virtual motor neurorehabilitation therapies.
机译:如果它们可以利用患者的情感状态,虚拟康复环境可能会提供更高的患者个性化。四种州:焦虑,痛苦,参与和疲劳(一种身体或心理),被假设可从可观察到的手势指标可推断,抓住康复相关。贡献; (a)由半天真贝叶斯分类器构建的多分辨率分类器,(b)从电机代理建立所考虑的状态的预测关系,利用所提出的分类器,具有足以利用的识别水平。 3D手部门和夹持强度流从5次卒中后患者记录,而在4周超过10次通过虚拟康复通过虚拟康复施用的摩托康复治疗。溪流的特点是运动动力学,而州的自发表现由伴随的视频标记为监督分类专家。将新分类器与基线支持向量机(SVM)和随机森林(RF)进行比较,所有这三种表现出可比的性能。上述状态的推断出现在选定的电动机替代品看起来可行,加速增加虚拟电动机神经孢子疗法的个性化。

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