English

Learning weakly supervised multimodal phoneme embeddings

Computation and Language 2017-10-19 v2 Machine Learning

Abstract

Recent works have explored deep architectures for learning multimodal speech representation (e.g. audio and images, articulation and audio) in a supervised way. Here we investigate the role of combining different speech modalities, i.e. audio and visual information representing the lips movements, in a weakly supervised way using Siamese networks and lexical same-different side information. In particular, we ask whether one modality can benefit from the other to provide a richer representation for phone recognition in a weakly supervised setting. We introduce mono-task and multi-task methods for merging speech and visual modalities for phone recognition. The mono-task learning consists in applying a Siamese network on the concatenation of the two modalities, while the multi-task learning receives several different combinations of modalities at train time. We show that multi-task learning enhances discriminability for visual and multimodal inputs while minimally impacting auditory inputs. Furthermore, we present a qualitative analysis of the obtained phone embeddings, and show that cross-modal visual input can improve the discriminability of phonological features which are visually discernable (rounding, open/close, labial place of articulation), resulting in representations that are closer to abstract linguistic features than those based on audio only.

Keywords

Cite

@article{arxiv.1704.06913,
  title  = {Learning weakly supervised multimodal phoneme embeddings},
  author = {Rahma Chaabouni and Ewan Dunbar and Neil Zeghidour and Emmanuel Dupoux},
  journal= {arXiv preprint arXiv:1704.06913},
  year   = {2017}
}
R2 v1 2026-06-22T19:24:54.267Z