Improving facial expression recognition for autism with IDenseNet-RCAformer under occlusions.

IF 1.7 4区 医学 Q3 DEVELOPMENTAL BIOLOGY
S Selvi, M Parvathy
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引用次数: 0

Abstract

The term 'autism spectrum disorder' describes a neurodevelopmental illness typified by verbal and nonverbal interaction impairments, repetitive behaviour patterns and poor social interaction. Understanding mental states from FEs is crucial for interpersonal interaction and social interaction. But when there are occlusions like glasses, facial hair or self-occlusion, it becomes harder to identify facial expressions accurately. This research tackles the issue of identifying facial expressions when parts of the face are occluded and suggests an innovative technique to tackle this difficulty. Creating a strong framework for facial expression recognition (FER) that better handles occlusions and increases recognition accuracy is the goal of this research. Therefore, we propose novel Improved DenseNet-based Residual Cross-Attention Transformer (IDenseNet-RCAformer) system to tackle the partial occlusion FER problem in autism patients. The recognition framework's efficacy is assessed using four datasets of facial expressions, and some preprocessing procedures are conducted to increase the expression recognition efficiency. After that, when recognizing expressions, a simple argmax function is applied to get a forecasted landmark position from a heatmap. Then feature extraction phase, local and global representation are captured from preprocessed images by adopting Inception-ResNet-V2 approach, Cross-Attention Transformer, respectively. Moreover, both features are fused by employing the FusionNet method, thereby enhancing system's training speed and precision. After the features are extracted, an improved DenseNet mechanism is applied to efficiently recognize some variety of facial expressions in partially occluded autism patients. A number of performance metrics are determined and analysed to demonstrate the proposed approach's effectiveness, where the IDenseNet-RCAformer performs best with an accuracy of 98.95%. According to the experimental findings, the proposed framework significantly outperforms the prior recognition frameworks in terms of recognition outcomes.

利用 IDenseNet-RCAformer 改善遮挡下的自闭症面部表情识别。
自闭症谱系障碍 "一词描述的是一种神经发育疾病,其典型特征是言语和非言语互动障碍、重复行为模式和社会交往能力差。从外显子中了解心理状态对于人际交往和社会互动至关重要。但是,如果有眼镜、面部毛发或自我遮挡等遮挡物,就很难准确识别面部表情。本研究探讨了在面部部分遮挡时识别面部表情的问题,并提出了一种创新技术来解决这一难题。本研究的目标是为面部表情识别(FER)创建一个强大的框架,以更好地处理遮挡并提高识别准确率。因此,我们提出了新颖的基于改进密集网络的残留交叉注意变换器(IDenseNet-RCAformer)系统,以解决自闭症患者的部分遮挡 FER 问题。我们使用四个面部表情数据集评估了该识别框架的有效性,并进行了一些预处理程序以提高表情识别效率。然后,在识别表情时,应用一个简单的 argmax 函数从热图中获取预测的地标位置。然后在特征提取阶段,采用 Inception-ResNet-V2 方法和 Cross-Attention Transformer 方法,分别从预处理后的图像中获取局部和全局表征。此外,还采用 FusionNet 方法对这两种特征进行融合,从而提高系统的训练速度和精度。提取特征后,改进的 DenseNet 机制被用于高效识别部分遮挡的自闭症患者的各种面部表情。实验确定并分析了一系列性能指标,以证明所提方法的有效性,其中 IDenseNet-RCAformer 的准确率为 98.95%,表现最佳。根据实验结果,拟议框架在识别结果方面明显优于之前的识别框架。
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来源期刊
CiteScore
3.30
自引率
5.60%
发文量
78
审稿时长
6-12 weeks
期刊介绍: International Journal of Developmental Neuroscience publishes original research articles and critical review papers on all fundamental and clinical aspects of nervous system development, renewal and regeneration, as well as on the effects of genetic and environmental perturbations of brain development and homeostasis leading to neurodevelopmental disorders and neurological conditions. Studies describing the involvement of stem cells in nervous system maintenance and disease (including brain tumours), stem cell-based approaches for the investigation of neurodegenerative diseases, roles of neuroinflammation in development and disease, and neuroevolution are also encouraged. Investigations using molecular, cellular, physiological, genetic and epigenetic approaches in model systems ranging from simple invertebrates to human iPSC-based 2D and 3D models are encouraged, as are studies using experimental models that provide behavioural or evolutionary insights. The journal also publishes Special Issues dealing with topics at the cutting edge of research edited by Guest Editors appointed by the Editor in Chief. A major aim of the journal is to facilitate the transfer of fundamental studies of nervous system development, maintenance, and disease to clinical applications. The journal thus intends to disseminate valuable information for both biologists and physicians. International Journal of Developmental Neuroscience is owned and supported by The International Society for Developmental Neuroscience (ISDN), an organization of scientists interested in advancing developmental neuroscience research in the broadest sense.
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