CVAIFeb 4, 2025

Deep Learning-Based Facial Expression Recognition for the Elderly: A Systematic Review

arXiv:2502.02618v19 citationsh-index: 15
Originality Synthesis-oriented
AI Analysis

It addresses the need for emotional monitoring technologies to support elderly healthcare and well-being, but is incremental as it reviews existing research rather than proposing new methods.

This systematic review analyzed 31 studies on deep learning-based facial expression recognition for the elderly, finding that convolutional neural networks are dominant but face challenges like scarce elderly-specific datasets and limited real-world deployment.

The rapid aging of the global population has highlighted the need for technologies to support elderly, particularly in healthcare and emotional well-being. Facial expression recognition (FER) systems offer a non-invasive means of monitoring emotional states, with applications in assisted living, mental health support, and personalized care. This study presents a systematic review of deep learning-based FER systems, focusing on their applications for the elderly population. Following a rigorous methodology, we analyzed 31 studies published over the last decade, addressing challenges such as the scarcity of elderly-specific datasets, class imbalances, and the impact of age-related facial expression differences. Our findings show that convolutional neural networks remain dominant in FER, and especially lightweight versions for resource-constrained environments. However, existing datasets often lack diversity in age representation, and real-world deployment remains limited. Additionally, privacy concerns and the need for explainable artificial intelligence emerged as key barriers to adoption. This review underscores the importance of developing age-inclusive datasets, integrating multimodal solutions, and adopting XAI techniques to enhance system usability, reliability, and trustworthiness. We conclude by offering recommendations for future research to bridge the gap between academic progress and real-world implementation in elderly care.

Foundations

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

Your Notes