Litcius/Paper detail

DEPA

Pingyue Zhang, Mengyue Wu, Heinrich Dinkel, Kai Yu

202149 citationsDOIOpen Access PDF

Abstract

Depression detection research has increased over the last few decades, one major bottleneck of which is the limited data availability and representation learning. Recently, self-supervised learning has seen success in pretraining text embeddings and has been applied broadly on related tasks with sparse data, while pretrained audio embeddings based on self-supervised learning are rarely investigated. This paper proposes DEPA, a self-supervised, pretrained dep ression a udio embedding method for depression detection. An encoder-decoder network is used to extract DEPA on in-domain depressed datasets (DAIC and MDD) and out-domain (Switchboard, Alzheimer's) datasets. With DEPA as the audio embedding extracted at response-level, a significant performance gain is achieved on downstream tasks, evaluated on both sparse datasets like DAIC and large major depression disorder dataset (MDD). This paper not only exhibits itself as a novel embedding extracting method capturing response-level representation for depression detection but more significantly, is an exploration of self-supervised learning in a specific task within audio processing.

Topics & Concepts

Computer scienceEmbeddingArtificial intelligenceBottleneckMachine learningEncoderTask (project management)Domain (mathematical analysis)Representation (politics)Pattern recognition (psychology)Natural language processingMathematicsEconomicsEmbedded systemPoliticsOperating systemLawPolitical scienceManagementMathematical analysisSpeech Recognition and SynthesisMental Health via WritingMusic and Audio Processing