HICNet is a reference-guided exposure correction network that distills images into illumination embeddings, uses their differences to drive FiLM-based modulation and photometric channel rebalancing, and employs cross-batch contrastive loss, all trained without ground truth.
Learning Reference-Guided Exposure Correction with Hybrid Illumination Characteristics
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abstract
We present HICNet, a reference-guided exposure correction framework. A lightweight, content-agnostic encoder distills each image into a compact illumination embedding capturing regional brightness, edge contrast, and higher-order luminance moments. The embedding difference between a source and its reference drives a multi-scale modulation network that combines FiLM-based global adjustment with Photometric Channel Rebalancing for fine-grained, illumination-aware spectral gating, producing exposure-matched outputs while faithfully preserving scene details. A cross-batch contrastive loss orders the illumination manifold, bolstering robustness to diverse lighting conditions. Trained without ground truth or intrinsic decomposition, HICNet attains better accuracy on public benchmarks and generalizes well to entirely unseen scenes.
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cs.CV 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Learning Reference-Guided Exposure Correction with Hybrid Illumination Characteristics
HICNet is a reference-guided exposure correction network that distills images into illumination embeddings, uses their differences to drive FiLM-based modulation and photometric channel rebalancing, and employs cross-batch contrastive loss, all trained without ground truth.