AI RESEARCH
Towards Lightest Low-Light Image Enhancement Architecture for Mobile Devices
arXiv CS.CV
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ArXi:2507.04277v2 Announce Type: replace Real-time low-light image enhancement on mobile and embedded devices requires models that balance visual quality and computational efficiency. Existing deep learning methods often rely on large networks and labeled datasets, limiting their deployment on resource-constrained platforms. In this paper, we propose LiteIE, an ultra-lightweight unsupervised enhancement framework that eliminates dependence on large-scale supervision and generalizes well across diverse conditions.