Ghosh Anay, Umer Saiyed, Khan Muhammad Khurram, Rout Ranjeet Kumar, Dhara Bibhas Chandra
Department of Computer Science & Engineering, University of Engineering & Management, Kolkata, 700156 India.
Department of Computer Science & Engineering, Aliah University, Kolkata, 700156 India.
Cluster Comput. 2023;26(1):119-135. doi: 10.1007/s10586-022-03552-z. Epub 2022 Jan 29.
A sentiment analysis system has been proposed in this paper for pain detection using cutting edge techniques in a smart healthcare framework. This proposed system may be eligible for detecting pain sentiments by analyzing facial expressions on the human face. The implementation of the proposed system has been divided into four components. The first component is about detecting the face region from the input image using a tree-structured part model. Statistical and deep learning-based feature analysis has been performed in the second component to extract more valuable and distinctive patterns from the extracted facial region. In the third component, the prediction models based on statistical and deep feature analysis derive scores for the pain intensities (no-pain, low-pain, and high-pain) on the facial region. The scores due to the statistical and deep feature analysis are fused to enhance the performance of the proposed method in the fourth component. We have employed two benchmark facial pain expression databases during experimentation, such as UNBC-McMaster shoulder pain and 2D Face-set database with Pain-expression. The performance concerning these databases has been compared with some existing state-of-the-art methods. These comparisons show the superiority of the proposed system.
本文提出了一种情感分析系统,用于在智能医疗框架中使用前沿技术进行疼痛检测。该系统可能有资格通过分析人脸的面部表情来检测疼痛情绪。所提出系统的实现分为四个组件。第一个组件是使用树形结构的部件模型从输入图像中检测面部区域。第二个组件进行了基于统计和深度学习的特征分析,以从提取的面部区域中提取更有价值和独特的模式。在第三个组件中,基于统计和深度特征分析的预测模型得出面部区域疼痛强度(无疼痛、轻度疼痛和重度疼痛)的分数。在第四个组件中,将基于统计和深度特征分析的分数进行融合,以提高所提出方法的性能。在实验过程中,我们使用了两个基准面部疼痛表情数据库,如UNBC - 麦克马斯特肩部疼痛数据库和带有疼痛表情的二维人脸数据集。已将这些数据库的性能与一些现有的先进方法进行了比较。这些比较显示了所提出系统的优越性。