IEEE Access (Jan 2017)

3D Convolutional Neural Networks for Cross Audio-Visual Matching Recognition

  • Amirsina Torfi,
  • Seyed Mehdi Iranmanesh,
  • Nasser Nasrabadi,
  • Jeremy Dawson

DOI
https://doi.org/10.1109/ACCESS.2017.2761539
Journal volume & issue
Vol. 5
pp. 22081 – 22091

Abstract

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Audio-visual recognition (AVR) has been considered as a solution for speech recognition tasks when the audio is corrupted, as well as a visual recognition method used for speaker verification in multispeaker scenarios. The approach of AVR systems is to leverage the extracted information from one modality to improve the recognition ability of the other modality by complementing the missing information. The essential problem is to find the correspondence between the audio and visual streams, which is the goal of this paper. We propose the use of a coupled 3D convolutional neural network (3D CNN) architecture that can map both modalities into a representation space to evaluate the correspondence of audio-visual streams using the learned multimodal features. The proposed architecture will incorporate both spatial and temporal information jointly to effectively find the correlation between temporal information for different modalities. By using a relatively small network architecture and much smaller data set for training, our proposed method surpasses the performance of the existing similar methods for audio-visual matching, which use 3D CNNs for feature representation. We also demonstrate that an effective pair selection method can significantly increase the performance. The proposed method achieves relative improvements over 20% on the equal error rate and over 7% on the average precision in comparison to the state-of-the-art method.

Keywords