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Enhanced Depression Detection from Facial Cues Using Univariate Feature Selection Techniques

机译:使用单变量特征选择技术从面部提示中增强抑郁感检测

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Timely detection of depression and the accurate assessment of its severity are the two major challenges that face the medical community. To assist the clinicians, various objective measures are being explored by researchers. In literature, features extracted from the images or videos, are found relevant for detection of depression. Various feature extraction methods are suggested in literature. However, the high dimensionality of the features so obtained provide an overfitted learning model. This is handled in this work with the help of three popular univariate filter feature selection methods, which identify the reduced size of relevant subset of features. The combinations of univariate techniques with well-known classification and regression techniques are investigated. The performance of classification and regression techniques improved with the use of feature selection methods. Moreover, the proposed model has outperformed most of the video-based existing methods for identifying depression and determining its level of severity.
机译:及时发现抑郁症并准确评估其严重程度是医学界面临的两个主要挑战。为了协助临床医生,研究人员正在探索各种客观措施。在文献中,发现从图像或视频中提取的特征与抑郁症的检测有关。文献中提出了各种特征提取方法。然而,如此获得的特征的高维度提供了过度拟合的学习模型。这是在三种流行的单变量过滤器特征选择方法的帮助下进行的,这些方法确定了特征相关子集的缩小大小。研究了单变量技术与众所周知的分类和回归技术的组合。分类和回归技术的性能通过使用特征选择方法得以改善。此外,所提出的模型已经优于大多数基于视频的现有方法来识别抑郁症并确定其严重程度。

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