NID-DETR: A novel model for accurate target detection in dark environments

Abstract Target detection in low-light conditions poses significant challenges due to reduced contrast, increased noise, and color distortion, all of which adversely affect detection accuracy and robustness. Effective low-light target detection is crucial for reliable vision in critical applications...

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Main Authors: Qingyuan Pan, Qiang Liu, Wei Huang
Format: Article
Language:English
Published: Nature Portfolio 2025-05-01
Series:Scientific Reports
Subjects:
Online Access:https://doi.org/10.1038/s41598-025-98173-y
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author Qingyuan Pan
Qiang Liu
Wei Huang
author_facet Qingyuan Pan
Qiang Liu
Wei Huang
author_sort Qingyuan Pan
collection DOAJ
description Abstract Target detection in low-light conditions poses significant challenges due to reduced contrast, increased noise, and color distortion, all of which adversely affect detection accuracy and robustness. Effective low-light target detection is crucial for reliable vision in critical applications such as surveillance, autonomous driving, and underwater exploration. Current mainstream algorithms face challenges in extracting meaningful features under low-light conditions, which significantly limits their effectiveness. Furthermore, existing vision Transformer models demonstrate high computational complexity, indicating a need for further optimization and enhancement. Initially, we enhance the dataset during model training to optimize machine vision perception. Subsequently, we design an inverted residual cascade structure module to effectively address the inefficiencies in the global attention window mechanism. Finally, in the target detection output layer, we adopt strategies to reduce concatenation operations and optimize small object detection heads to decrease the model parameter count and improve precision. The dataset is divided into training, testing, and validation sets in a 7:2:1 ratio. Validation on the low-light dataset demonstrates a reduction of 27% in model parameters, with improvements of 2.4%, 4.8%, and 2% in AP50:95, AP50, and AP75, respectively. Our model outperforms both the best baseline and other state-of-the-art models. These experimental results underscore the effectiveness of our proposed approach.
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spelling doaj-art-7b65f7f7343a43518a8a751d31d0a34b2025-08-20T01:49:35ZengNature PortfolioScientific Reports2045-23222025-05-0115111310.1038/s41598-025-98173-yNID-DETR: A novel model for accurate target detection in dark environmentsQingyuan Pan0Qiang Liu1Wei Huang2School of Computer Science and Engineering, Wuhan institute of TechnologySchool of Computer Science and Engineering, Wuhan institute of TechnologySchool of Computer Science and Engineering, Wuhan institute of TechnologyAbstract Target detection in low-light conditions poses significant challenges due to reduced contrast, increased noise, and color distortion, all of which adversely affect detection accuracy and robustness. Effective low-light target detection is crucial for reliable vision in critical applications such as surveillance, autonomous driving, and underwater exploration. Current mainstream algorithms face challenges in extracting meaningful features under low-light conditions, which significantly limits their effectiveness. Furthermore, existing vision Transformer models demonstrate high computational complexity, indicating a need for further optimization and enhancement. Initially, we enhance the dataset during model training to optimize machine vision perception. Subsequently, we design an inverted residual cascade structure module to effectively address the inefficiencies in the global attention window mechanism. Finally, in the target detection output layer, we adopt strategies to reduce concatenation operations and optimize small object detection heads to decrease the model parameter count and improve precision. The dataset is divided into training, testing, and validation sets in a 7:2:1 ratio. Validation on the low-light dataset demonstrates a reduction of 27% in model parameters, with improvements of 2.4%, 4.8%, and 2% in AP50:95, AP50, and AP75, respectively. Our model outperforms both the best baseline and other state-of-the-art models. These experimental results underscore the effectiveness of our proposed approach.https://doi.org/10.1038/s41598-025-98173-yImage enhancementTarget detectionOptimize machine vision perception
spellingShingle Qingyuan Pan
Qiang Liu
Wei Huang
NID-DETR: A novel model for accurate target detection in dark environments
Scientific Reports
Image enhancement
Target detection
Optimize machine vision perception
title NID-DETR: A novel model for accurate target detection in dark environments
title_full NID-DETR: A novel model for accurate target detection in dark environments
title_fullStr NID-DETR: A novel model for accurate target detection in dark environments
title_full_unstemmed NID-DETR: A novel model for accurate target detection in dark environments
title_short NID-DETR: A novel model for accurate target detection in dark environments
title_sort nid detr a novel model for accurate target detection in dark environments
topic Image enhancement
Target detection
Optimize machine vision perception
url https://doi.org/10.1038/s41598-025-98173-y
work_keys_str_mv AT qingyuanpan niddetranovelmodelforaccuratetargetdetectionindarkenvironments
AT qiangliu niddetranovelmodelforaccuratetargetdetectionindarkenvironments
AT weihuang niddetranovelmodelforaccuratetargetdetectionindarkenvironments