Cervical Dystonia Detection using Facial and Eye Feature

Sharik Ali Ansari, Rahul Nijhawan, Ishan Bansal, Shlok Mohanty
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引用次数: 2

Abstract

This paper proposes a deep learning and traditional machine learning based automatic fusion detection method for Spasmodic Torticollis (the most common type of Cervical dystonia), a neurological disorder. The proposed method utilizes videos of subjects where all of the subjects will be tested if they have Cervical Dystonia or not. For Neurological disorders, generally, very less data is available in public domain due to patient anonymity issue. The paper focused on training Cervical dystonia detection model on very less dataset. Deep learning in the methodology is used to detect the features providing information to traditional ML models for classification task. Methodology developed can be also be extended to grade the severity of disorder. The proposed model achieves video classification accuracy of 90.00% using SVM as final traditional machine learning classifier. We also contribute the first publicly available dataset for Cervical dystonia.
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利用面部和眼睛特征检测颈张力障碍
本文提出了一种基于深度学习和传统机器学习的神经系统疾病痉挛性斜颈(颈肌张力障碍最常见的类型)的自动融合检测方法。所提出的方法利用受试者的视频,所有受试者都将被测试是否患有宫颈肌张力障碍。对于神经系统疾病,一般来说,由于患者匿名问题,在公共领域可获得的数据很少。本文的重点是在非常少的数据集上训练颈肌张力障碍检测模型。该方法利用深度学习来检测特征,为传统ML模型的分类任务提供信息。开发的方法也可以扩展到对障碍的严重程度进行分级。该模型使用SVM作为最终的传统机器学习分类器,实现了90.00%的视频分类准确率。我们还提供了第一个公开可用的宫颈肌张力障碍数据集。
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