SICLSDASOct 24, 2024

Making Social Platforms Accessible: Emotion-Aware Speech Generation with Integrated Text Analysis

arXiv:2410.19199v11 citationsh-index: 2ASONAM
Originality Incremental advance
AI Analysis

This addresses accessibility challenges for blind, visually impaired, and less-literate users on social networks by improving emotional rendering in speech synthesis.

The paper tackles the problem of generating emotionally expressive speech for social platform accessibility by proposing an end-to-end TTS system that derives emotion from text input, resulting in natural and expressive audio with competitive inference time for real-time use.

Recent studies have outlined the accessibility challenges faced by blind or visually impaired, and less-literate people, in interacting with social networks, in-spite of facilitating technologies such as monotone text-to-speech (TTS) screen readers and audio narration of visual elements such as emojis. Emotional speech generation traditionally relies on human input of the expected emotion together with the text to synthesise, with additional challenges around data simplification (causing information loss) and duration inaccuracy, leading to lack of expressive emotional rendering. In real-life communications, the duration of phonemes can vary since the same sentence might be spoken in a variety of ways depending on the speakers' emotional states or accents (referred to as the one-to-many problem of text to speech generation). As a result, an advanced voice synthesis system is required to account for this unpredictability. We propose an end-to-end context-aware Text-to-Speech (TTS) synthesis system that derives the conveyed emotion from text input and synthesises audio that focuses on emotions and speaker features for natural and expressive speech, integrating advanced natural language processing (NLP) and speech synthesis techniques for real-time applications. Our system also showcases competitive inference time performance when benchmarked against the state-of-the-art TTS models, making it suitable for real-time accessibility applications.

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