CVDec 1, 2025

ELVIS: Enhance Low-Light for Video Instance Segmentation in the Dark

arXiv:2512.01495v11 citationsh-index: 23
Originality Incremental advance
AI Analysis

This addresses a domain-specific challenge for computer vision applications in adverse lighting, but it is incremental as it builds on existing VIS methods.

The paper tackles the problem of video instance segmentation in low-light conditions by introducing ELVIS, a framework that adapts state-of-the-art VIS models to low-light scenarios, resulting in performance improvements of up to +3.7 AP on a synthetic dataset.

Video instance segmentation (VIS) for low-light content remains highly challenging for both humans and machines alike, due to adverse imaging conditions including noise, blur and low-contrast. The lack of large-scale annotated datasets and the limitations of current synthetic pipelines, particularly in modeling temporal degradations, further hinder progress. Moreover, existing VIS methods are not robust to the degradations found in low-light videos and, as a result, perform poorly even when finetuned on low-light data. In this paper, we introduce \textbf{ELVIS} (\textbf{E}nhance \textbf{L}ow-light for \textbf{V}ideo \textbf{I}nstance \textbf{S}egmentation), a novel framework that enables effective domain adaptation of state-of-the-art VIS models to low-light scenarios. ELVIS comprises an unsupervised synthetic low-light video pipeline that models both spatial and temporal degradations, a calibration-free degradation profile synthesis network (VDP-Net) and an enhancement decoder head that disentangles degradations from content features. ELVIS improves performances by up to \textbf{+3.7AP} on the synthetic low-light YouTube-VIS 2019 dataset. Code will be released upon acceptance.

Foundations

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