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SERAB: A MULTI-LINGUAL BENCHMARK FOR SPEECH EMOTION RECOGNITION
- Citation Author(s):
- Submitted by:
- Neil Scheidwass...
- Last updated:
- 6 May 2022 - 6:11am
- Document Type:
- Poster
- Document Year:
- 2022
- Event:
- Presenters:
- Neil Scheidwasser-Clow
- Paper Code:
- SPE-59.2
- Categories:
- Keywords:
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Recent developments in speech emotion recognition (SER) often leverage deep neural networks (DNNs). Comparing and benchmarking different DNN models can often be tedious due to the use of different datasets and evaluation protocols. To facilitate the process, here, we present the Speech Emotion Recognition Adaptation Benchmark (SERAB), a framework for evaluating the performance and generalization capacity of different approaches for utterance-level SER. The benchmark is composed of nine datasets for SER in six languages. Since the datasets have different sizes and numbers of emotional classes, the proposed setup is particularly suitable for estimating the generalization capacity of pre-trained DNN-based feature extractors. We used the proposed framework to evaluate a selection of standard hand-crafted feature sets and state-of-the-art DNN representations. The results highlight that using only a subset of the data included in SERAB can result in biased evaluation, while compliance with the proposed protocol can circumvent this issue.