AISDASDec 10, 2023

Neural Speech Embeddings for Speech Synthesis Based on Deep Generative Networks

arXiv:2312.05814v21 citationsBCI
Originality Synthesis-oriented
AI Analysis

This work addresses brain-to-speech technology for non-verbal communication, but it appears incremental as it focuses on analyzing existing methods rather than introducing new ones.

The paper tackles the problem of synthesizing speech from brain signals by analyzing neural features and embeddings, aiming to enhance communication naturalness through deep generative models.

Brain-to-speech technology represents a fusion of interdisciplinary applications encompassing fields of artificial intelligence, brain-computer interfaces, and speech synthesis. Neural representation learning based intention decoding and speech synthesis directly connects the neural activity to the means of human linguistic communication, which may greatly enhance the naturalness of communication. With the current discoveries on representation learning and the development of the speech synthesis technologies, direct translation of brain signals into speech has shown great promise. Especially, the processed input features and neural speech embeddings which are given to the neural network play a significant role in the overall performance when using deep generative models for speech generation from brain signals. In this paper, we introduce the current brain-to-speech technology with the possibility of speech synthesis from brain signals, which may ultimately facilitate innovation in non-verbal communication. Also, we perform comprehensive analysis on the neural features and neural speech embeddings underlying the neurophysiological activation while performing speech, which may play a significant role in the speech synthesis works.

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