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Journal of Graphics ›› 2026, Vol. 47 ›› Issue (1): 57-67.DOI: 10.11996/JG.j.2095-302X.2026010057

• Image Processing and Computer Vision • Previous Articles     Next Articles

A lightweight image flare removal method for night vision assisted driving

LI Ye1, JIA Junyang1, HUANG Guan1, LI Yujie2, QI Wenting1, LIU Yan1()   

  1. 1 School of Computer Science and Technology, Zhengzhou University of Light Industry, Zhengzhou Henan 450002, China
    2 School of Artificial Intelligence, Guilin University of Electronic Science and Technology, Guilin Guangxi 541004, China
  • Received:2025-03-05 Accepted:2025-06-17 Online:2026-02-28 Published:2026-03-16
  • Contact: LIU Yan
  • Supported by:
    Young Scientist Program of Henan Science and Technology Research and Development Joint Fund(22520080098);Science and Technology Research Project of Henan Province(242102211008);Science and Technology Innovation Team Support Program of Zhengzhou University of Light Industry(JSJ20230058)

Abstract:

In night-vision environments, image quality was significantly degraded by glare from intense light sources, impairing the performance of night-vision assisted driving systems. Existing flare-removal algorithms suffer from limited robustness, high computational complexity, and loss of light-source information. To address these challenges, a lightweight image flare-removal method, Night Flare Removal Network+ (NFR-Net+), was proposed to enhance image clarity while meeting the real-time computational demands of mobile devices. The approach first incorporated a feature-filtering mechanism combined with residual connection strategies to strengthen feature extraction capabilities, effectively mitigating overfitting and ensuring robust flare removal across diverse lighting conditions and flare types. Additionally, a nonlinear, activation-free feature attention module was introduced. Via a lightweight design, an efficient attention mechanism was constructed that significantly improved image-detail reconstruction while reducing model parameters by approximately 8.28% and runtime memory by about 11.1%, thereby optimizing computational efficiency. To tackle the issue of diminished image naturalness due to excessive light-source removal in traditional methods, an enhanced light-source extraction module was developed within the segmentation network. This module employed an improved light-source separation strategy to accurately preserve brightness and texture details in light-source regions, ensuring the authenticity and naturalness of output images. Experimental results demonstrated that NFR-Net+ surpassed state-of-the-art methods on image quality metrics such as Structural Similarity Index Measure (SSIM), Peak Signal-to-Noise Ratio (PSNR), and Learned Perceptual Image Patch Similarity (LPIPS), exhibiting superior flare-removal performance and detail preservation. The method also demonstrated strong adaptability across various night-vision scenarios and hardware devices, fulfilling the efficiency requirements for real-time processing. Ablation studies further validated the effectiveness of individual components, highlighting the critical role of feature filtering and attention mechanisms in balancing performance and resource consumption. This approach provided an efficient, lightweight solution for applications such as nighttime autonomous driving and intelligent surveillance.

Key words: flare removal, night vision environment, light source information, nonlinear no activation, lightweight

CLC Number: