Speech Landmark Bigrams for Depression Detection from Naturalistic Smartphone Speech

Zhaocheng Huang, J. Epps, Dale Joachim
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引用次数: 19

Abstract

Detection of depression from speech has attracted significant research attention in recent years but remains a challenge, particularly for speech from diverse smartphones in natural environments. This paper proposes two sets of novel features based on speech landmark bigrams associated with abrupt speech articulatory events for depression detection from smartphone audio recordings. Combined with techniques adapted from natural language text processing, the proposed features further exploit landmark bigrams by discovering latent articulatory events. Experimental results on a large, naturalistic corpus containing various spoken tasks recorded from diverse smartphones suggest that speech landmark bigram features provide a 30.1% relative improvement in F1 (depressed) relative to an acoustic feature baseline system. As might be expected, a key finding was the importance of tailoring the choice of landmark bigrams to each elicitation task, revealing that different aspects of speech articulation are elicited by different tasks, which can be effectively captured by the landmark approaches.
基于自然智能手机语音的抑郁检测语音地标双元图
近年来,从语音中检测抑郁症吸引了大量的研究关注,但仍然是一个挑战,特别是对于自然环境中各种智能手机的语音。本文提出了两组基于语音地标双特征的智能手机语音抑郁检测方法。结合自然语言文本处理技术,所提出的特征通过发现潜在的发音事件进一步利用地标双元图。在包含从不同智能手机记录的各种语音任务的大型自然语料库上的实验结果表明,相对于声学特征基线系统,语音地标双字母特征在F1(压抑)方面提供了30.1%的相对改善。正如预期的那样,一个关键的发现是为每个引出任务量身定制里程碑式图式的选择的重要性,揭示了不同任务引出语音发音的不同方面,这些方面可以通过里程碑式方法有效地捕捉到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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