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优化的高效注意力网络在神经保健中的面部表情分析。

Optimized efficient attention-based network for facial expressions analysis in neurological health care.

机构信息

Sejong University, Seoul, 143-747, Republic of Korea.

Digital Image Processing Lab, Department of Computer Science, Islamia College, Peshawar, 25000, Pakistan; Department of Computer Science, Norwegian University for Science and Technology, 2815, Gjøvik, Norway.

出版信息

Comput Biol Med. 2024 Sep;179:108822. doi: 10.1016/j.compbiomed.2024.108822. Epub 2024 Jul 11.

Abstract

Facial Expression Analysis (FEA) plays a vital role in diagnosing and treating early-stage neurological disorders (NDs) like Alzheimer's and Parkinson's. Manual FEA is hindered by expertise, time, and training requirements, while automatic methods confront difficulties with real patient data unavailability, high computations, and irrelevant feature extraction. To address these challenges, this paper proposes a novel approach: an efficient, lightweight convolutional block attention module (CBAM) based deep learning network (DLN) to aid doctors in diagnosing ND patients. The method comprises two stages: data collection of real ND patients, and pre-processing, involving face detection and an attention-enhanced DLN for feature extraction and refinement. Extensive experiments with validation on real patient data showcase compelling performance, achieving an accuracy of up to 73.2%. Despite its efficacy, the proposed model is lightweight, occupying only 3MB, making it suitable for deployment on resource-constrained mobile healthcare devices. Moreover, the method exhibits significant advancements over existing FEA approaches, holding tremendous promise in effectively diagnosing and treating ND patients. By accurately recognizing emotions and extracting relevant features, this approach empowers medical professionals in early ND detection and management, overcoming the challenges of manual analysis and heavy models. In conclusion, this research presents a significant leap in FEA, promising to enhance ND diagnosis and care.The code and data used in this work are available at: https://github.com/munsif200/Neurological-Health-Care.

摘要

面部表情分析(FEA)在诊断和治疗阿尔茨海默病和帕金森病等早期神经障碍(ND)方面起着至关重要的作用。手动 FEA 受到专业知识、时间和培训要求的限制,而自动方法则面临真实患者数据不可用、计算量大和无关特征提取等困难。为了解决这些挑战,本文提出了一种新的方法:一种基于高效、轻量级卷积块注意模块(CBAM)的深度学习网络(DLN),以帮助医生诊断 ND 患者。该方法包括两个阶段:真实 ND 患者的数据收集和预处理,包括面部检测和注意力增强的 DLN,用于特征提取和细化。使用真实患者数据进行的广泛实验验证了该方法的出色性能,准确率高达 73.2%。尽管该模型效率高,但它的重量很轻,仅占用 3MB,非常适合部署在资源有限的移动医疗保健设备上。此外,该方法在现有的 FEA 方法上取得了显著的进展,在有效诊断和治疗 ND 患者方面具有巨大的潜力。通过准确识别情绪和提取相关特征,该方法使医疗专业人员能够在早期 ND 检测和管理中发挥作用,克服了手动分析和大型模型的挑战。总之,这项研究在 FEA 方面取得了重大突破,有望提高 ND 的诊断和护理水平。这项工作中使用的代码和数据可在以下网址获得:https://github.com/munsif200/Neurological-Health-Care。

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