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Deep Hybrid Spatiotemporal Networks for Continuous Pain Intensity Estimation

机译:用于连续疼痛强度估计的深杂种季兆网络

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Humans use rich facial expressions to indicate unpleasant emotions, such as pain. Automatic pain intensity estimation is useful in a variety of applications in social and medical domains. However, the existing pain intensity estimation approaches are limited to either classifying the discrete intensity levels in pain or estimating the continuous pain intensities without considering the key-frame. The first approach suffers from abnormal fluctuations while estimating the pain intensity levels. Further, continuous pain estimation approaches suffer from low prediction capabilities. Hence, in this paper, we propose a deep hybrid network based approach to automatically estimate the continuous pain intensities by incorporating spatiotemporal information. Our approach consists of two key components, namely key-frame analyser and temporal analyser. We use one conventional and two recurrent convolutional neural networks to design key-frame and temporal analysers, respectively. Further, the evaluation on a benchmark dataset shows that our model can estimate the continuous emotions better than existing state-of-the-art methods.
机译:人类使用丰富的面部表情来表示令人不快的情绪,如痛苦。自动疼痛强度估计在社会和医学领域的各种应用中是有用的。然而,现有的疼痛强度估计方法仅限于对疼痛的离散强度水平进行分类,或者在不考虑关键框架的情况下估计连续的疼痛强度。第一种方法在估计疼痛强度水平时遭受异常波动。此外,连续疼痛估计方法遭受低预测能力。因此,在本文中,我们提出了一种基于杂交网络的深度混合网方法来自动估计连续疼痛强度来纳入时空信息。我们的方法包括两个关键组件,即键帧分析仪和时间分析仪。我们使用一个传统和两个经常性卷积神经网络来设计键帧和时间分析仪。此外,基准数据集的评估表明,我们的模型可以估计比现有的最先进方法更好的情绪。

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