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Towards incorporating affective computing to virtual rehabilitation; surrogating attributed attention from posture for boosting therapy adaptation

机译:将情感计算纳入虚拟康复;代价归因于姿势促进疗法适应的关注

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Virtual rehabilitation (VR) is a novel motor rehabilitation therapy in which the rehabilitation exercises occurs through interaction with bespoken virtual environments. These virtual environments dynamically adapt their activity to match the therapy progress. Adaptation should be guided by the cognitive and emotional state of the patient, none of which are directly observable. Here, we present our first steps towards inferring non-observable attentional state from unobtrusively observable seated posture, so that this knowledge can later be exploited by a VR platform to modulate its behaviour. The space of seated postures was discretized and 648 pictures of acted representations were exposed to crowd-evaluation to determine attributed state of attention. A semi-supervised classifier based on Naive Bayes with structural improvement was learnt to unfold a predictive relation between posture and attributed attention. Internal validity was established following a 2 × 5 cross-fold strategy. Following 4959 votes from crowd, classification accuracy reached a promissory 96.29% (μ±σ = 87.59±6.59) and F-measure reached 82.35% (μ ± σ = 69.72 ± 10.50). With the afforded rate of classification, we believe it is safe to claim posture as a reliable proxy for attributed attentional state. It follows that unobtrusively monitoring posture can be exploited for guiding an intelligent adaptation in a virtual rehabilitation platform. This study further helps to identify critical aspects of posture permitting inference of attention.
机译:虚拟康复(VR)是一种新型电动机康复治疗,其中通过与观众虚拟环境的互动发生康复练习。这些虚拟环境动态调整其活动以匹配治疗进度。适应应该被患者的认知和情绪状态指导,这不会是直接观察到的。在这里,我们提出了我们的第一步,以从不显着可观察到的坐姿推断不可观察的注意力状态,从而可以通过VR平台来利用这种知识来调制其行为。坐姿的空间是离散化的,并且648张被动表示的照片被接触到人群评估,以确定归属的关注状态。学会了一个基于天真贝贝斯的半监督分类器,展开了姿势与归因于关注的预测关系。内部有效性建立了2×5交叉折叠策略。在4959票中,来自人群的投票,分类准确率达到了预先达到96.29%(μ±σ= 87.59±6.59)和F测量达到82.35%(μ±σ= 69.72±10.50)。凭借凭借分类率,我们认为,对于归属于归属状态的可靠代理是安全的。因此,可以利用不引人注目的监视姿势来指导虚拟康复平台中的智能适应。本研究进一步有助于确定允许引人注目的姿势的关键方面。

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