Assiri Basem, Hossain Mohammad Alamgir
Department of Computer Science, College of CS & IT, Jazan University, Kingdom of Saudi Arabia.
Math Biosci Eng. 2023 Jan;20(1):913-929. doi: 10.3934/mbe.2023042. Epub 2022 Oct 18.
Over time for the past few years, facial expression identification has been a promising area. However, darkness, lighting conditions, and other factors make facial emotion identification challenging to detect. As a result, thermal images are suggested as a solution to such problems and for a variety of other benefits. Furthermore, focusing on significant regions of a face rather than the entire face is sufficient for reducing processing and improving accuracy at the same time. This research introduces novel infrared thermal image-based approaches for facial emotion recognition. First, the entire image of the face is separated into four pieces. Then, we accepted only four active regions (ARs) to prepare training and testing datasets. These four ARs are the left eye, right eye, and lips areas. In addition, ten-folded cross-validation is proposed to improve recognition accuracy using Convolutional Neural Network (CNN), a machine learning technique. Furthermore, we incorporated a parallelism technique to reduce processing-time in testing and training datasets. As a result, we have seen that the processing time reduces to 50%. Finally, a decision-level fusion is applied to improve the recognition accuracy. As a result, the proposed technique achieves a recognition accuracy of 96.87 %. The achieved accuracy ascertains the robustness of our proposed scheme.
在过去几年里,面部表情识别一直是一个很有前景的领域。然而,黑暗、光照条件和其他因素使得面部情绪识别难以检测。因此,热图像被建议作为解决此类问题的方法以及具有多种其他益处。此外,关注面部的重要区域而非整个面部足以在减少处理量的同时提高准确性。本研究介绍了基于红外热图像的新型面部情绪识别方法。首先,将面部的整个图像分成四部分。然后,我们只接受四个活动区域(ARs)来准备训练和测试数据集。这四个ARs是左眼、右眼和嘴唇区域。此外,提出了十折交叉验证,以使用卷积神经网络(CNN)(一种机器学习技术)提高识别准确率。此外,我们采用了并行技术来减少测试和训练数据集的处理时间。结果,我们发现处理时间减少到了50%。最后,应用决策级融合来提高识别准确率。结果,所提出的技术实现了96.87%的识别准确率。所达到的准确率确定了我们所提出方案的稳健性。