AffectSRNet : Facial Emotion-Aware Super-Resolution Network
Journal:
arXiv
Published Date:
Feb 14, 2025
Abstract
Facial expression recognition (FER) systems in low-resolution settings face
significant challenges in accurately identifying expressions due to the loss of
fine-grained facial details. This limitation is especially problematic for
applications like surveillance and mobile communications, where low image
resolution is common and can compromise recognition accuracy. Traditional
single-image face super-resolution (FSR) techniques, however, often fail to
preserve the emotional intent of expressions, introducing distortions that
obscure the original affective content. Given the inherently ill-posed nature
of single-image super-resolution, a targeted approach is required to balance
image quality enhancement with emotion retention. In this paper, we propose
AffectSRNet, a novel emotion-aware super-resolution framework that reconstructs
high-quality facial images from low-resolution inputs while maintaining the
intensity and fidelity of facial expressions. Our method effectively bridges
the gap between image resolution and expression accuracy by employing an
expression-preserving loss function, specifically tailored for FER
applications. Additionally, we introduce a new metric to assess emotion
preservation in super-resolved images, providing a more nuanced evaluation of
FER system performance in low-resolution scenarios. Experimental results on
standard datasets, including CelebA, FFHQ, and Helen, demonstrate that
AffectSRNet outperforms existing FSR approaches in both visual quality and
emotion fidelity, highlighting its potential for integration into practical FER
applications. This work not only improves image clarity but also ensures that
emotion-driven applications retain their core functionality in suboptimal
resolution environments, paving the way for broader adoption in FER systems.