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3 months ago

Large Raw Emotional Dataset with Aggregation Mechanism

Vladimir Kondratenko Artem Sokolov Nikolay Karpov Oleg Kutuzov Nikita Savushkin Fyodor Minkin

Large Raw Emotional Dataset with Aggregation Mechanism

Abstract

We present a new data set for speech emotion recognition (SER) tasks called Dusha. The corpus contains approximately 350 hours of data, more than 300 000 audio recordings with Russian speech and their transcripts. Therefore it is the biggest open bi-modal data collection for SER task nowadays. It is annotated using a crowd-sourcing platform and includes two subsets: acted and real-life. Acted subset has a more balanced class distribution than the unbalanced real-life part consisting of audio podcasts. So the first one is suitable for model pre-training, and the second is elaborated for fine-tuning purposes, model approbation, and validation. This paper describes pre-processing routine, annotation, and experiment with a baseline model to demonstrate some actual metrics which could be obtained with the Dusha data set.

Code Repositories

Benchmarks

BenchmarkMethodologyMetrics
speech-emotion-recognition-on-dusha-crowdDusha baseline
Macro F1: 0.77
UA: 0.83
WA: 0.76
speech-emotion-recognition-on-dusha-podcastDusha baseline
Macro F1: 0.54
UA: 0.89
WA: 0.53

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Large Raw Emotional Dataset with Aggregation Mechanism | Papers | HyperAI