Semi-fedser: Semi-supervised Learning For Speech Emotion Recognition On Federated Learning Using Multiview Pseudo-labeling
2022 Β· Tiantian Feng, Shrikanth Narayanan
Abstract
Speech Emotion Recognition (SER) application is frequently associated with privacy concerns as it often acquires and transmits speech data at the client-side to remote cloud platforms for further processing. These speech data can reveal not only speech content and affective information but the speaker's identity, demographic traits, and health status. Federated learning (FL) is a distributed machine learning algorithm that coordinates clients to train a model collaboratively without sharing local data. This algorithm shows enormous potential for SER applications as sharing raw speech or speech features from a user's device is vulnerable to privacy attacks. However, a major challenge in FL is limited availability of high-quality labeled data samples. In this work, we propose a semi-supervised federated learning framework, Semi-FedSER, that utilizes both labeled and unlabeled data samples to address the challenge of limited labeled data samples in FL. We show that our Semi-FedSER can gen
Authors
(none)
Tags
Stats
Related papers
- Semi-supervised Cross-lingual Speech Emotion Recognition (2022)10.85
- Communication-efficient Personalized Federated Learning For Speech-to-text Tasks (2024)7.81
- Exploring Self-supervised Multi-view Contrastive Learning For Speech Emotion Recognition With Limited Annotations (2024)3.58
- Fednst: Federated Noisy Student Training For Automatic Speech Recognition (2022)6.77
- Deep Residual Local Feature Learning For Speech Emotion Recognition (2020)7.16
- Separate But Together: Unsupervised Federated Learning For Speech Enhancement From Non-iid Data (2021)8.35
- Continuous Metric Learning For Transferable Speech Emotion Recognition And Embedding Across Low-resource Languages (2022)0.00
- Improved Speech Emotion Recognition Using Transfer Learning And Spectrogram Augmentation (2021)12.74