一种用于抑郁分析的时间分段fisher向量方法

Abhinav Dhall, Roland Göcke
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引用次数: 48

摘要

抑郁症和其他情绪障碍是常见的致残障碍,对个人和家庭产生深远影响。尽管发病率很高,但在早期阶段很容易被忽视。在过去的几年里,自动抑郁分析已经成为情感计算界一个非常活跃的研究领域。本文提出了一种基于单峰视觉线索的抑郁分析框架。时间分段费雪向量(FV)是在时间段上计算的。作为一种低级特征,计算了分块局部二值模式-三正交平面描述符。对统计聚合技术进行了分析和比较,以创建视频样本的判别代表。本文探讨了FV在自发性临床数据中表现时间段的强度。这在时间段中创建了一个有意义的面部动态表示。实验在音频视频情绪挑战(AVEC) 2014德语抑郁数据库上进行。与目前的技术相比,所提出的框架的优越结果表明了该技术的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A temporally piece-wise fisher vector approach for depression analysis
Depression and other mood disorders are common, disabling disorders with a profound impact on individuals and families. Inspite of its high prevalence, it is easily missed during the early stages. Automatic depression analysis has become a very active field of research in the affective computing community in the past few years. This paper presents a framework for depression analysis based on unimodal visual cues. Temporally piece-wise Fisher Vectors (FV) are computed on temporal segments. As a low-level feature, block-wise Local Binary Pattern-Three Orthogonal Planes descriptors are computed. Statistical aggregation techniques are analysed and compared for creating a discriminative representative for a video sample. The paper explores the strength of FV in representing temporal segments in a spontaneous clinical data. This creates a meaningful representation of the facial dynamics in a temporal segment. The experiments are conducted on the Audio Video Emotion Challenge (AVEC) 2014 German speaking depression database. The superior results of the proposed framework show the effectiveness of the technique as compared to the current state-of-art.
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