HCAISDASNov 8, 2023

Synthetic Speaking Children -- Why We Need Them and How to Make Them

arXiv:2311.06307v11 citationsh-index: 11
Originality Incremental advance
AI Analysis

This work addresses the problem of data scarcity and privacy restrictions for training AI models in vulnerable populations like children, though it is incremental as it builds on existing generative technologies.

The research tackled the challenge of generating synthetic training data for child-focused AI systems by creating a controllable pipeline that produces realistic talking child video clips, achieving realistic lip synchronization and a gender-balanced dataset of children's faces.

Contemporary Human Computer Interaction (HCI) research relies primarily on neural network models for machine vision and speech understanding of a system user. Such models require extensively annotated training datasets for optimal performance and when building interfaces for users from a vulnerable population such as young children, GDPR introduces significant complexities in data collection, management, and processing. Motivated by the training needs of an Edge AI smart toy platform this research explores the latest advances in generative neural technologies and provides a working proof of concept of a controllable data generation pipeline for speech driven facial training data at scale. In this context, we demonstrate how StyleGAN2 can be finetuned to create a gender balanced dataset of children's faces. This dataset includes a variety of controllable factors such as facial expressions, age variations, facial poses, and even speech-driven animations with realistic lip synchronization. By combining generative text to speech models for child voice synthesis and a 3D landmark based talking heads pipeline, we can generate highly realistic, entirely synthetic, talking child video clips. These video clips can provide valuable, and controllable, synthetic training data for neural network models, bridging the gap when real data is scarce or restricted due to privacy regulations.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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