Department of Biomedical Engineering, College of Engineering and Technology, SRM Institute of Science and Technology, Chennai, Tamil Nadu, India.
Department of Electronics and Instrumentation Engineering, St. Joseph's College of Engineering, Anna University, Chennai, Tamil Nadu, India.
Proc Inst Mech Eng H. 2021 Oct;235(10):1113-1127. doi: 10.1177/09544119211024778. Epub 2021 Jun 9.
Children with autism spectrum disorder have impairments in emotional processing which leads to the inability in recognizing facial expressions. Since emotion is a vital criterion for having fine socialisation, it is incredibly important for the autistic children to recognise emotions. In our study, we have chosen the facial skin temperature as a biomarker to measure emotions. To assess the facial skin temperature, the thermal imaging modality has been used in this study, since it has been recognised as a promising technique to evaluate emotional responses. The aim of this study was the following: (1) to compare the facial skin temperature of autistic and non-autistic children by using thermal imaging across various emotions; (2) to classify the thermal images obtained from the study using the customised convolutional neural network compared with the ResNet 50 network. Fifty autistic and fifty non-autistic participants were included for the study. Thermal imaging was used to obtain the temperature of specific facial regions such as the eyes, cheek, forehead and nose while we evoked emotions (Happiness, anger and sadness) in children using an audio-visual stimulus. Among the emotions considered, the emotion anger had the highest temperature difference between the autistic and non-autistic participants in the region's eyes (1.9%), cheek (2.38%) and nose (12.6%). The accuracy obtained by classifying the thermal images of the autistic and non-autistic children using Customised Neural Network and ResNet 50 Network was 96% and 90% respectively. This computer aided diagnostic tool can be a predictable and a steadfast method in the diagnosis of the autistic individuals.
自闭症谱系障碍儿童在情绪处理方面存在障碍,导致他们无法识别面部表情。由于情绪是良好社交能力的重要标准,因此自闭症儿童识别情绪的能力非常重要。在我们的研究中,我们选择面部皮肤温度作为衡量情绪的生物标志物。为了评估面部皮肤温度,本研究采用了热成像模式,因为它已被认为是评估情绪反应的有前途的技术。本研究的目的如下:(1) 通过热成像比较自闭症和非自闭症儿童在各种情绪下的面部皮肤温度;(2) 使用定制的卷积神经网络与 ResNet 50 网络对从研究中获得的热图像进行分类。本研究纳入了 50 名自闭症儿童和 50 名非自闭症儿童。使用热成像技术获取眼睛、脸颊、额头和鼻子等特定面部区域的温度,同时使用视听刺激引发儿童的情绪(快乐、愤怒和悲伤)。在所考虑的情绪中,情绪愤怒在眼睛(1.9%)、脸颊(2.38%)和鼻子(12.6%)区域中,自闭症和非自闭症参与者之间的温差最大。使用定制神经网络和 ResNet 50 网络对自闭症和非自闭症儿童的热图像进行分类所获得的准确率分别为 96%和 90%。这种计算机辅助诊断工具可以成为自闭症个体诊断的一种可预测和可靠的方法。