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arXiv 提交日期: 2026-06-22
📄 Abstract - LUMINA-26: Low-Light Understanding for Modeling and Interpreting Night-time Actions

Low-light human action recognition remains a challenging problem due to poor illumination, amplified noise, motion ambiguity, and diverse real-world scenes. Existing low-light datasets often lack sufficient action diversity, capture realism, or balanced class distribution, limiting the development of robust models. To address this, we introduce LUMINA-26: Low-Light Understanding for Modeling and Interpreting Night-time Actions, comprising 6,784 clips across 26 action classes, recorded from 22 subjects across 20 indoor and outdoor locations under naturally occurring low-light conditions. We also propose Illumi-Net: An Illumination-Adaptive Mixture-of-Experts Network, which leverages video-level illumination cues to guide adaptive enhancement and transformer-based spatio-temporal feature extraction, with expert-conditioned decision fusion. Our method surpasses previous state-of-the-art performance on ELLAR (Top-1: 55.13%, Top-5: 78.87%) and establishes a strong baseline on LUMINA-26 (Top-1: 75.95%, Top-5: 93.58%), offering a practical benchmark for future low-light action recognition research.

顶级标签: computer vision video benchmark
详细标签: action recognition low-light video dataset mixture-of-experts illumination adaptation 或 搜索:

LUMINA-26:面向夜间动作建模与理解的低光照识别数据集与方法 / LUMINA-26: Low-Light Understanding for Modeling and Interpreting Night-time Actions


1️⃣ 一句话总结

本文提出了一个名为LUMINA-26的夜间低光照动作识别数据集,包含6784个视频片段和26类动作,并设计了自适应光照增强的混合专家网络Illumi-Net,在低光照条件下显著提升了动作识别的准确率。

源自 arXiv: 2606.23118