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ECCNet: An Ensemble of Compact Convolution Neural Network for Pain Severity Assessment from Face images

机译:ECCNet:紧凑型卷积神经网络的合奏,用于疼痛严重程度评估面部图像

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Pain is an indication of physical discomfort, and its assessment is crucial for the medical diagnosis of the patient. Currently, the self-report are known to be the gold standard for pain assessment. However, it is highly subjective and prone to human errors. Therefore, in this paper facial expression based fully automated pain severity assessment system is proposed. Although significant work is done within the pain research area from facial expressions, the volume of the research has been conducted for either binary (pain/no pain) or four class classification problems. Moreover, previous approaches utilized a single neural network with a large number of trainable parameters. A single deep neural network might not achieve optimum performance due to instability. Hence, in this study Ensemble of Compact Convolutional Neural Networks (ECCNet) has been proposed for assessing various pain intensities from the facial images. The proposed system represents an effective way of boosting the performance of the pain classifier by combining various heterogeneous compact CNNs into an ensemble. The proposed ECCNet system utilizes multiple CNN topologies along with different configuration settings. Here, we have suggested that learning of multiple heterogeneous compact CNNs results in more generalized pain classifiers than learning from independent baselearners. Given this, the proposed system utilizes three compact CNNs (i.e. variant of VGG, MobileNet, and GoogleNet) and integrated their predictions using the average ensemble rule. Moreover, various augmentation techniques are used to improve the generalization capability of each network. The proposed system has been evaluated extensively on the UNBC-McMaster shoulder pain dataset for five-level of pain intensities. The experimental results demonstrate the significance of the proposed ensemble method, which achieved 91.41 % of F1-score for pain severity assessment.
机译:疼痛表明身体不适,评估对于患者的医学诊断至关重要。目前,已知自我报告是疼痛评估的黄金标准。然而,它是高度主观和易于人类的错误。因此,在本文的基础上,提出了基于全自动疼痛严重性评估系统的面部表达。虽然在面部表情的疼痛研究区域内完成了大量工作,但研究的研究数量是为二元(疼痛/无疼痛)或四类分类问题进行的。此外,以前的方法利用单个神经网络,具有大量的培训参数。由于不稳定,单个深度神经网络可能无法实现最佳性能。因此,在这项研究中,已经提出了用于评估面部图像的各种疼痛强度的紧凑型卷积神经网络(ECCNet)。所提出的系统代表通过将各种异质紧凑的CNN组合成集合来提高疼痛分级器的性能的有效方法。所提出的ECCnet系统使用多个CNN拓扑以及不同的配置设置。在这里,我们提出了多种异构紧凑型CNN的学习导致比从独立基座的学习更广泛的疼痛分类剂。鉴于这一点,所提出的系统利用三个紧凑的CNNS(即VGG,MobileNet和Googlenet的变体),并使用平均集合规则整合它们的预测。此外,各种增强技术用于改善每个网络的泛化能力。拟议的系统已经在UNBC-MCMASTER肩部疼痛数据集中进行了广泛的评估,用于五层疼痛强度。实验结果表明了所提出的合并方法的重要性,其达到了疼痛严重程度评估的91.41%的F1分数。

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