Affiliation:
1. School of Civil Engineering, Hunan University of Science and Technology, Xiangtan 411201, China
Abstract
The segmentation of crack detection and severity assessment in low-light environments presents a formidable challenge. To address this, we propose a novel dual encoder structure, denoted as DSD-Net, which integrates fast Fourier transform with a convolutional neural network. In this framework, we incorporate an information extraction module and an attention feature fusion module to effectively capture contextual global information and extract pertinent local features. Furthermore, we introduce a fractal dimension estimation method into the network, seamlessly integrated as an end-to-end task, augmenting the proficiency of professionals in detecting crack pathology within low-light settings. Subsequently, we curate a specialized dataset comprising instances of crack pathology in low-light conditions to facilitate the training and evaluation of the DSD-Net algorithm. Comparative experimentation attests to the commendable performance of DSD-Net in low-light environments, exhibiting superlative precision (88.5%), recall (85.3%), and F1 score (86.9%) in the detection task. Notably, DSD-Net exhibits a diminutive Model Size (35.3 MB) and elevated Frame Per Second (80.4 f/s), thereby endowing it with the potential to be seamlessly integrated into edge detection devices, thus amplifying its practical utility.
Funder
National Natural Science Foundation of China
Natural Science Foundation of Hunan Province, China
Science and Technology Progress and Innovation Project of Transport Department of Hunan Province
Scientific Research Fund of Hunan Provincial Education Department
Subject
Statistics and Probability,Statistical and Nonlinear Physics,Analysis
Cited by
5 articles.
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