期刊文献+
共找到4篇文章
< 1 >
每页显示 20 50 100
RNPC-net:Automatic recognition and mapping of weathering degree and groundwater condition of tunnel faces
1
作者 Xiang Wu Fengyan Wang +4 位作者 Jianping Chen Mingchang Wang Lina Cheng Chengyao Zhang Junke Xu 《Journal of Rock Mechanics and Geotechnical Engineering》 2026年第2期1138-1159,共22页
Accurate and rapid recognition of weathering degree(WD)and groundwater condition(GC)is essential for evaluating rock mass quality and conducting stability analyses in underground engineering.Conventional WD and GC rec... Accurate and rapid recognition of weathering degree(WD)and groundwater condition(GC)is essential for evaluating rock mass quality and conducting stability analyses in underground engineering.Conventional WD and GC recognition methods often rely on subjective evaluation by field experts,supplemented by field sampling and laboratory testing.These methods are frequently complex and timeconsuming,making it challenging to meet the rapidly evolving demands of underground engineering.Therefore,this study proposes a rock non-geometric parameter classification network(RNPC-net)to rapidly achieve the recognition and mapping ofWD and GC of tunnel faces.The hybrid feature extraction module(HFEM)in RNPC-net can fully extract,fuse,and utilize multi-scale features of images,enhancing the network's classification performance.Moreover,the designed adaptive weighting auxiliary classifier(AC)helps the network learn features more efficiently.Experimental results show that RNPC-net achieved classification accuracies of 0.8756 and 0.8710 for WD and GC,respectively,representing an improvement of approximately 2%e10%compared to other methods.Both quantitative and qualitative experiments confirm the effectiveness and superiority of RNPC-net.Furthermore,for WD and GC mapping,RNPC-net outperformed other methods by achieving the highest mean intersection over union(mIOU)across most tunnel faces.The mapping results closely align with measurements provided by field experts.The application of WD and GC mapping results to the rock mass rating(RMR)system achieved a transition from conventional qualitative to quantitative evaluation.This advancement enables more accurate and reliable rock mass quality evaluations,particularly under critical conditions of RMR. 展开更多
关键词 Tunnel face Weathering degree Groundwater condition RNPC-net Hybrid feature extraction module Recognition and mapping
在线阅读 下载PDF
A Lightweight Network with Dual Encoder and Cross Feature Fusion for Cement Pavement Crack Detection
2
作者 Zhong Qu Guoqing Mu Bin Yuan 《Computer Modeling in Engineering & Sciences》 SCIE EI 2024年第7期255-273,共19页
Automatic crack detection of cement pavement chiefly benefits from the rapid development of deep learning,with convolutional neural networks(CNN)playing an important role in this field.However,as the performance of cr... Automatic crack detection of cement pavement chiefly benefits from the rapid development of deep learning,with convolutional neural networks(CNN)playing an important role in this field.However,as the performance of crack detection in cement pavement improves,the depth and width of the network structure are significantly increased,which necessitates more computing power and storage space.This limitation hampers the practical implementation of crack detection models on various platforms,particularly portable devices like small mobile devices.To solve these problems,we propose a dual-encoder-based network architecture that focuses on extracting more comprehensive fracture feature information and combines cross-fusion modules and coordinated attention mechanisms formore efficient feature fusion.Firstly,we use small channel convolution to construct shallow feature extractionmodule(SFEM)to extract low-level feature information of cracks in cement pavement images,in order to obtainmore information about cracks in the shallowfeatures of images.In addition,we construct large kernel atrous convolution(LKAC)to enhance crack information,which incorporates coordination attention mechanism for non-crack information filtering,and large kernel atrous convolution with different cores,using different receptive fields to extract more detailed edge and context information.Finally,the three-stage feature map outputs from the shallow feature extraction module is cross-fused with the two-stage feature map outputs from the large kernel atrous convolution module,and the shallow feature and detailed edge feature are fully fused to obtain the final crack prediction map.We evaluate our method on three public crack datasets:DeepCrack,CFD,and Crack500.Experimental results on theDeepCrack dataset demonstrate the effectiveness of our proposed method compared to state-of-the-art crack detection methods,which achieves Precision(P)87.2%,Recall(R)87.7%,and F-score(F1)87.4%.Thanks to our lightweight crack detectionmodel,the parameter count of the model in real-world detection scenarios has been significantly reduced to less than 2M.This advancement also facilitates technical support for portable scene detection. 展开更多
关键词 Shallow feature extraction module large kernel atrous convolution dual encoder lightweight network crack detection
在线阅读 下载PDF
RF-Net: Unsupervised Low-Light Image Enhancement Based on Retinex and Exposure Fusion 被引量:3
3
作者 Tian Ma Chenhui Fu +2 位作者 Jiayi Yang Jiehui Zhang Chuyang Shang 《Computers, Materials & Continua》 SCIE EI 2023年第10期1103-1122,共20页
Low-light image enhancement methods have limitations in addressing issues such as color distortion,lack of vibrancy,and uneven light distribution and often require paired training data.To address these issues,we propo... Low-light image enhancement methods have limitations in addressing issues such as color distortion,lack of vibrancy,and uneven light distribution and often require paired training data.To address these issues,we propose a two-stage unsupervised low-light image enhancement algorithm called Retinex and Exposure Fusion Network(RFNet),which can overcome the problems of over-enhancement of the high dynamic range and under-enhancement of the low dynamic range in existing enhancement algorithms.This algorithm can better manage the challenges brought about by complex environments in real-world scenarios by training with unpaired low-light images and regular-light images.In the first stage,we design a multi-scale feature extraction module based on Retinex theory,capable of extracting details and structural information at different scales to generate high-quality illumination and reflection images.In the second stage,an exposure image generator is designed through the camera response mechanism function to acquire exposure images containing more dark features,and the generated images are fused with the original input images to complete the low-light image enhancement.Experiments show the effectiveness and rationality of each module designed in this paper.And the method reconstructs the details of contrast and color distribution,outperforms the current state-of-the-art methods in both qualitative and quantitative metrics,and shows excellent performance in the real world. 展开更多
关键词 Low-light image enhancement multiscale feature extraction module exposure generator exposure fusion
在线阅读 下载PDF
TM-WSNet:A precise segmentation method for individual rubber trees based on UAV LiDAR point cloud
4
作者 Lele Yan Guoxiong Zhou +1 位作者 Miying Yan Xiangjun Wang 《Plant Phenomics》 2025年第3期231-248,共18页
Rubber products have become an important strategic resource in the global economy.However,individual rubber tree segmentation in plantation environments remains challenging due to canopy background interfer-ence and s... Rubber products have become an important strategic resource in the global economy.However,individual rubber tree segmentation in plantation environments remains challenging due to canopy background interfer-ence and significant morphological variations among trees.To address these issues,we propose a high-precision segmentation network,TM-WSNet(Spatial Geometry Enhanced Hybrid Feature Extraction Module-Wavelet Grid Feature Fusion Encoder Segmentation Network).First,we introduce SGTramba,a hybrid feature extraction module combining Grouped Transformer and Mamba architectures,designed to reduce confusion between tree crown boundaries and surrounding vegetation or background elements.Second,we propose the WGMS encoder,which enhances structural feature recognition by applying wavelet-based spatial grid downsampling and mul-tiscale feature fusion,effectively handling variations in canopy shape and tree height.Third,a scale optimization algorithm(SCPO)is developed to adaptively search for the optimal learning rate,addressing uneven learning across different resolution scales.We evaluate TM-WSNet on a self-constructed dataset(RubberTree)and two public datasets(ShapeNetPart and ForestSemantic),where it consistently achieves high segmentation accuracy and robustness.In practical field tests,our method accurately predicts key rubber tree parameters—height,crown width,and diameter at breast height with coefficients of determination(R^(2))of 1.00,0.99,and 0.89,respectively.These results demonstrate TM-WSNet's strong potential for supporting precision rubber yield estimation and health monitoring in complex plantation environments. 展开更多
关键词 Rubber tree segmentation Hybrid feature extraction module Wavelet grid sampling Multi-level feature fusion Scale optimization algorithm
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部