A Joint Deep Neural Network Model for Pain Recognition from Face

Ghazal Bargshady, J. Soar, Xujuan Zhou, R. Deo, F. Whittaker, Hua Wang
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引用次数: 28

Abstract

Pain is a primary symptom of diseases and an indicator of a patients’ health status. Effective management of pain is important for patient treatment and well-being. There are some traditional self-reported methods for pain assessment, and automatic pain detection systems using facial expressions are developing rapidly; these offer the potential for more efficient, convenient and cost-effective pain management. In this paper, a joint deep neural network model is proposed to classify pain intensity in four categories from facial images. This study used two different Recurrent Neural Networks (RNN), which were pre-trained with Visual Geometric Group Face Convolutional Neural Network (VGGFace CNN) and then joined together as a network to estimate pain intensity levels. The UNBC-McMaster Shoulder Pain database was used to train and test the proposed algorithm. As a contribution to knowledge, this paper provides new information regarding the performance of a hybrid, joint deep learning algorithm for pain multi-classification in facial images.
面部疼痛识别的联合深度神经网络模型
疼痛是疾病的主要症状,也是病人健康状况的一个指标。有效的疼痛管理对患者的治疗和健康至关重要。有一些传统的自我报告疼痛评估方法,基于面部表情的自动疼痛检测系统正在迅速发展;这为更有效、更方便和更具成本效益的疼痛管理提供了潜力。本文提出了一种联合深度神经网络模型,将面部图像中的疼痛强度分为四类。本研究使用两种不同的递归神经网络(RNN),使用视觉几何组面部卷积神经网络(VGGFace CNN)进行预训练,然后将它们连接在一起作为一个网络来估计疼痛强度水平。采用UNBC-McMaster肩膀疼痛数据库对该算法进行训练和测试。作为对知识的贡献,本文提供了关于面部图像疼痛多重分类的混合联合深度学习算法的性能的新信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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