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Medical images application of contour extraction based on Hermite splines contour model 被引量:1
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作者 陈曾胜 周康源 +1 位作者 胡跃辉 李传富 《Journal of Harbin Institute of Technology(New Series)》 EI CAS 2006年第6期702-706,共5页
Active Contour Model or Snake model is an efficient method by which the users can extract the object contour of Region Of Interest (ROI). In this paper, we present an improved method combining Hermite splines curve ... Active Contour Model or Snake model is an efficient method by which the users can extract the object contour of Region Of Interest (ROI). In this paper, we present an improved method combining Hermite splines curve and Snake model that can be used as a tool for fast and intuitive contour extraction. We choose Hermite splines curve as a basic function of Snake contour curve and present its energy function. The optimization of energy minimization is performed hy Dynamic Programming technique. The validation results are presented, comparing the traditional Snake model and the HSCM, showing the similar performance of the latter. We can find that HSCM can overcome the non-convex constraints efficiently. Several medical images applications illustrate that Hermite Splines Contour Model (HSCM) is more efficient than traditional Snake model. 展开更多
关键词 hermite splines contour model HSCM Snake model dynamic programming contour extraction
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Contour Extraction of Skin Tumors Using Visual Attention and GVF-Snake Model 被引量:1
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作者 Li Ma Tianzhen Su 《Engineering(科研)》 2013年第10期482-486,共5页
Contour extraction of skin tumors accurately is an important task for further feature generation of their borders and sur-faces to early diagnose melanomas. An integrated approach, combining visual attention model and... Contour extraction of skin tumors accurately is an important task for further feature generation of their borders and sur-faces to early diagnose melanomas. An integrated approach, combining visual attention model and GVF-snake, is pro-posed in the paper to provide a general framework for locating tumor boundaries in case of noise and boundaries with large concavity. For any skin image, the visual attention model is implemented to locate the Region of Interests (ROIs) based on saliency maps. Then an algorithm called GVF-snake is utilized to iteratively drive an initial contour, deriving from the extracted ROIs, towards real boundary of skin tumors by minimizing an energy function. It is shown from ex-periments that the proposed approach exceeds in two aspects compared with other contour-deforming methods: 1) ini-tial contours generated from saliency maps are definitely located at neighboring regions of real boundaries of skin tu-mors to speed up converges of contour deformation and achieve higher accuracy;2) the method is not sensitive to nois-es on skins and initial contours extracted. 展开更多
关键词 Visual ATTENTION GVF-SNAKE contour extractION SKIN TUMORS
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CE-EEN-B0:Contour Extraction Based Extended EfficientNet-B0 for Brain Tumor Classification Using MRI Images
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作者 Abishek Mahesh Deeptimaan Banerjee +2 位作者 Ahona Saha Manas Ranjan Prusty A.Balasundaram 《Computers, Materials & Continua》 SCIE EI 2023年第3期5967-5982,共16页
A brain tumor is the uncharacteristic progression of tissues in the brain.These are very deadly,and if it is not diagnosed at an early stage,it might shorten the affected patient’s life span.Hence,their classificatio... A brain tumor is the uncharacteristic progression of tissues in the brain.These are very deadly,and if it is not diagnosed at an early stage,it might shorten the affected patient’s life span.Hence,their classification and detection play a critical role in treatment.Traditional Brain tumor detection is done by biopsy which is quite challenging.It is usually not preferred at an early stage of the disease.The detection involvesMagneticResonance Imaging(MRI),which is essential for evaluating the tumor.This paper aims to identify and detect brain tumors based on their location in the brain.In order to achieve this,the paper proposes a model that uses an extended deep Convolutional Neural Network(CNN)named Contour Extraction based Extended EfficientNet-B0(CE-EEN-B0)which is a feed-forward neural network with the efficient net layers;three convolutional layers and max-pooling layers;and finally,the global average pooling layer.The site of tumors in the brain is one feature that determines its effect on the functioning of an individual.Thus,this CNN architecture classifies brain tumors into four categories:No tumor,Pituitary tumor,Meningioma tumor,andGlioma tumor.This network provides an accuracy of 97.24%,a precision of 96.65%,and an F1 score of 96.86%which is better than already existing pre-trained networks and aims to help health professionals to cross-diagnose an MRI image.This model will undoubtedly reduce the complications in detection and aid radiologists without taking invasive steps. 展开更多
关键词 Brain tumor image preprocessing contour extraction disease classification transfer learning
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A Dense Feature Iterative Fusion Network for Extracting Building Contours from Remote Sensing Imagery
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作者 WU Jiangyan WANG Tong 《Journal of Donghua University(English Edition)》 CAS 2024年第6期654-661,共8页
Extracting building contours from aerial images is a fundamental task in remote sensing.Current building extraction methods cannot accurately extract building contour information and have errors in extracting small-sc... Extracting building contours from aerial images is a fundamental task in remote sensing.Current building extraction methods cannot accurately extract building contour information and have errors in extracting small-scale buildings.This paper introduces a novel dense feature iterative(DFI)fusion network,denoted as DFINet,for extracting building contours.The network uses a DFI decoder to fuse semantic information at different scales and learns the building contour knowledge,producing the last features through iterative fusion.The dense feature fusion(DFF)module combines features at multiple scales.We employ the contour reconstruction(CR)module to access the final predictions.Extensive experiments validate the effectiveness of the DFINet on two different remote sensing datasets,INRIA aerial image dataset and Wuhan University(WHU)building dataset.On the INRIA aerial image dataset,our method achieves the highest intersection over union(IoU),overall accuracy(OA)and F 1 scores compared to other state-of-the-art methods. 展开更多
关键词 remote sensing image building contour extraction feature iteration
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Extraction of coastline in high-resolution remote sensing images based on the active contour model
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作者 邢坤 付宜利 +1 位作者 王树国 韩现伟 《Journal of Harbin Institute of Technology(New Series)》 EI CAS 2011年第4期13-18,共6页
While executing tasks such as ocean pollution monitoring,maritime rescue,geographic mapping,and automatic navigation utilizing remote sensing images,the coastline feature should be determined.Traditional methods are n... While executing tasks such as ocean pollution monitoring,maritime rescue,geographic mapping,and automatic navigation utilizing remote sensing images,the coastline feature should be determined.Traditional methods are not satisfactory to extract coastline in high-resolution panchromatic remote sensing image.Active contour model,also called snakes,have proven useful for interactive specification of image contours,so it is used as an effective coastlines extraction technique.Firstly,coastlines are detected by water segmentation and boundary tracking,which are considered initial contours to be optimized through active contour model.As better energy functions are developed,the power assist of snakes becomes effective.New internal energy has been done to reduce problems caused by convergence to local minima,and new external energy can greatly enlarge the capture region around features of interest.After normalization processing,energies are iterated using greedy algorithm to accelerate convergence rate.The experimental results encompassed examples in images and demonstrated the capabilities and efficiencies of the improvement. 展开更多
关键词 remote sensing images coastline extraction active contour model greedy algorithm
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Fast and Robust DCNN Based Lithography SEM Image Contour Extraction Models
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作者 Tao Zhou Xuelong Shi +7 位作者 Chen Li Yan Yan Bowen Xu Shoumian Chen Yuhang Zhao Wenzhan Zhou Kan Zhou Xuan Zeng 《Journal of Microelectronic Manufacturing》 2021年第1期16-22,共7页
Scanning electron microscope(SEM)metrology is critical in semiconductor manufacturing for patterning process quality assessment and monitoring.Besides feature width and feature-feature space dimension measurements fro... Scanning electron microscope(SEM)metrology is critical in semiconductor manufacturing for patterning process quality assessment and monitoring.Besides feature width and feature-feature space dimension measurements from critical dimension SEM(CDSEM)images,visual inspection of SEM image also offers rich information on the quality of patterning.However,visual inspection alone leaves considerable room of ambiguity regarding patterning quality.To narrow the room of ambiguity and to obtain more statistically quantitative information on patterning quality,SEM-image contours are often extracted to serve such purposes.From contours,important information such as critical dimension and resist sidewall angle at any location can be estimated.Those geometrical information can be used for optical proximity correction(OPC)model verification and lithography hotspot detection,etc.Classical contour extraction algorithms based on local information have insufficient capability in dealing with noisy and low contrast images.To achieve reliable contours from noisy and low contrast images,information beyond local should be made use of as much as possible.In this regard,deep convolutional neural network(DCNN)has proven its great capability,as manifested in various computer vision tasks.Taking the full advantages of this maturing technology,we have designed a DCNN network and applied it to the task of extracting contours from noisy and low contrast SEM images.It turns out that the model is capable of separating the resist top and bottom contours reliably.In addition,the model does not generate false contours,it also can suppress the generation of broken contours when ambiguous area for contour extraction is small and non-detrimental.With advanced image alignment algorithm with sub-pixel accuracy,contours from different exposure fields of same process condition can be superposed to estimate process variation band,furthermore,stochastic effect induced edge placement variation statistics can easily be inferred from the extracted contours. 展开更多
关键词 SEM images contour extraction machine leaning(ML) deep convolution neural network(DCNN) edge placement variation
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Edge Contour Extraction in MR Image Using Edgeflow Contour Model
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作者 YUAN Da 《Computer Aided Drafting,Design and Manufacturing》 2014年第2期1-5,共5页
This paper presents a new model for edge extraction of MR images, based on curve evolution and edgeflow techniques. At first the model for curve evolution is constructed, which automatically detect boundaries, and cha... This paper presents a new model for edge extraction of MR images, based on curve evolution and edgeflow techniques. At first the model for curve evolution is constructed, which automatically detect boundaries, and change of topology in terms of the edgeflow fields, and then the numerical approximation of the model is introduced, which is based on semi-implicit scheme to speed up the proposed approach. Finally, the numerical implementation is present and the experimental results show that the proposed model successfully extracts the edge contours, regardless of the heavy noise. 展开更多
关键词 MR images edgeflow contour model edge contour extraction
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仿海豚哨声频率调制水声通信信号自动识别 被引量:1
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作者 刘亚男 刘凇佐 +3 位作者 方涛 马天龙 颜宏璐 凌焕章 《声学学报》 北大核心 2026年第1期310-321,共12页
针对现有水声信号特征参数无法有效识别仿海豚哨声水声通信信号调制方式的问题,提出联合多特征的仿海豚哨声频率调制水声通信信号自动识别方法。首先,通过预处理和最小二乘多项式拟合估计海豚哨声谱轮廓;然后,基于估计的海豚哨声谱轮廓... 针对现有水声信号特征参数无法有效识别仿海豚哨声水声通信信号调制方式的问题,提出联合多特征的仿海豚哨声频率调制水声通信信号自动识别方法。首先,通过预处理和最小二乘多项式拟合估计海豚哨声谱轮廓;然后,基于估计的海豚哨声谱轮廓提取特征参数,仿真结果表明提取的特征对仿海豚哨声频率调制水声通信信号具有良好的识别能力和稳健性;最后,联合支持向量机分类器实现自动识别。湖试验证了所提方法的识别效果,分析了调制参数(码元宽度和频率偏移量)对识别率的影响。结果表明,调制的频率偏移量对平均识别率的影响更显著。当频率偏移量为50 Hz,信噪比大于5 dB时,平均识别率约90%以上;当频率偏移量不小于100 Hz,信噪比大于0 dB时,平均识别率达到95%以上。 展开更多
关键词 仿生水声通信 海豚哨声 自动调制识别 特征提取 哨声谱轮廓
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Image-based Extraction of Characteristic Value of Pathological Leaf Surface 被引量:1
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作者 程鹏飞 周春娥 刘静香 《Plant Diseases and Pests》 CAS 2010年第5期18-20,25,共4页
[ Objective] Computer image processing technology was used to distinguish the angular leaf spot and spotted disease in the agricultural production. [Method] The computer vision technology was used to carry out chromat... [ Objective] Computer image processing technology was used to distinguish the angular leaf spot and spotted disease in the agricultural production. [Method] The computer vision technology was used to carry out chromatic research on the plant pathological characteristics. The color and texture were taken as the plant disease image characteristic parameter to extract the perimeter, area and the shape of the lesion image, thus carrying out the classification judgment on the disease image. [ Result] C IE1976H IS chorma percentage histogram method was adopted to extract chromaticity characteristic parameters, the process was simple and effective with fast operation speed, eliminating the effect of leaf size and shape. The statistical characteristic parameter of chorma histogram was analyzed to obtain chroma skewness, which could significantly distinguish different symptoms of disease. [ Conclusion] The study suggested that chroma skewness could be adopted as the characteristic parameter to distinguish spotted disease with angular leaf spot. 展开更多
关键词 Image processing contour following Plant disease Characteristic value extraction CHROMA
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激光点云室内建模轮廓线提取方法研究
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作者 林志君 《科技资讯》 2026年第5期251-256,共6页
激光点云技术已成为室内建筑三维建模的重要手段,然而,受复杂结构与遮挡影响,点云中结构轮廓线的提取仍面临准确性与效率的双重挑战。本文以S3DIS数据集的点云为研究对象,提出一种基于二维投影与Hough变换相结合的轮廓线提取方法。首先... 激光点云技术已成为室内建筑三维建模的重要手段,然而,受复杂结构与遮挡影响,点云中结构轮廓线的提取仍面临准确性与效率的双重挑战。本文以S3DIS数据集的点云为研究对象,提出一种基于二维投影与Hough变换相结合的轮廓线提取方法。首先,对点云进行地面提取、去噪、下采样等预处理,并采用Z向切片生成二维投影图像。其次,通过边缘增强与Hough直线检测实现轮廓线提取,结合线段合并与冗余剔除,优化最终结果。实验表明,所提方法在结构清晰区域具有较高的识别精度与处理效率,并且在不同点密度和遮挡条件下表现出良好鲁棒性。与传统方法对比,该方法在精度、完整率和效率方面均表现更优,适合工程化应用。研究成果可以为室内点云建模、结构矢量化、BIM数据提取等提供技术支撑。 展开更多
关键词 激光点云 室内建模 轮廓线提取 HOUGH变换 二维投影
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基于Contourlet变换和PCNN的CT图像椎体解剖轮廓特征提取方法的研究 被引量:3
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作者 李峤 李海云 《中国生物医学工程学报》 CAS CSCD 北大核心 2010年第6期841-845,共5页
提出一种新的基于Contourlet变换和脉冲耦合神经网络(PCNN)的医学图像解剖轮廓特征提取算法。首先对原始椎体CT图像进行Contourlet变换,得到能稀疏表示图像边缘以及方向信息的子带和低频子带;然后结合PCNN对低频子带进行边缘轮廓细节提... 提出一种新的基于Contourlet变换和脉冲耦合神经网络(PCNN)的医学图像解剖轮廓特征提取算法。首先对原始椎体CT图像进行Contourlet变换,得到能稀疏表示图像边缘以及方向信息的子带和低频子带;然后结合PCNN对低频子带进行边缘轮廓细节提取,最后利用处理后的所有子带系数,通过Contourlet逆变换,提取出图像的边缘轮廓。实验将本算法提取的结果与Canny算子、区域生长法以及结合小波变换和PCNN的算法提取的图像边缘轮廓进行比较,结果表明新算法能够有效的实现医学图像解剖结构轮廓特征的提取。 展开更多
关键词 contourLET变换 脉冲耦合神经网络(PCNN) 轮廓提取 椎体CT
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基于轮廓线提取算法的铁路站场路基土石方算量程序设计
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作者 李龙 《铁路计算机应用》 2026年第2期74-78,共5页
为解决铁路站场横断面结构复杂、土石方算量工作繁重、传统手工作业及现有辅助程序效率较低的问题,设计了一套基于轮廓线自动提取算法的铁路站场路基土石方算量程序。通过将横断面图元解析为点线结构并重构为无向连接图,结合图形预处理... 为解决铁路站场横断面结构复杂、土石方算量工作繁重、传统手工作业及现有辅助程序效率较低的问题,设计了一套基于轮廓线自动提取算法的铁路站场路基土石方算量程序。通过将横断面图元解析为点线结构并重构为无向连接图,结合图形预处理与容错机制,实现了外轮廓、内轮廓及多区域合并轮廓的智能提取。基于.Net平台对AutoCAD进行二次开发,实现填料区域的自动分类、内外轮廓线的智能生成、面积自动标注统计,以及土石方表的自动输出等功能。应用结果表明,该程序可显著提升土石方算量工作的效率,在小型站场中效率提高2倍以上,在大型编组站中效率提升更为显著,并具备向拆迁、用地面积统计等领域推广应用的潜力。 展开更多
关键词 铁路路基 土石方算量程序 轮廓线提取算法 横断面算量 CAD二次开发
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喀斯特地貌等高线测绘地形特征点提取优化方法
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作者 陈怡 《测绘与空间地理信息》 2026年第3期159-162,共4页
针对喀斯特地貌二元结构导致的传统等高线测绘特征点遗漏、误判及自动化不足等问题,文章以贵州茂兰国家级自然保护区为研究区,提出融合机载LiDAR、高分辨率遥感影像与深度学习的优化提取方法。通过多源数据预处理构建多特征数据集,采用... 针对喀斯特地貌二元结构导致的传统等高线测绘特征点遗漏、误判及自动化不足等问题,文章以贵州茂兰国家级自然保护区为研究区,提出融合机载LiDAR、高分辨率遥感影像与深度学习的优化提取方法。通过多源数据预处理构建多特征数据集,采用多尺度分割提取宏观地貌特征,结合嵌入CBAM注意力机制的改进U-Net模型识别微地貌特征,经空间一致性校验、冗余剔除与精度精化实现全尺度特征点融合。实验结果表明,该方法有效提升了复杂地貌区测绘精准度与效率,为高精度地形图更新、生态监测及动态跟踪提供了可靠技术支撑。 展开更多
关键词 喀斯特地貌 等高线测绘 地形特征点提取 优化方法
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Contour reconstruction of three-dimensional spiral CT damage image
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作者 Cui Ling-Ling Zhang Hui 《Journal of Innovative Optical Health Sciences》 SCIE EI CAS 2018年第5期42-50,共9页
In order to improve the diagnosis and analysis ability of 3D spiral CT and to reconstruct the contour of 3D spiral CT damage image,a contour reconstruction method based on sharpening template enhancement for 3D spiral... In order to improve the diagnosis and analysis ability of 3D spiral CT and to reconstruct the contour of 3D spiral CT damage image,a contour reconstruction method based on sharpening template enhancement for 3D spiral CT damage image is proposed.This method uses the active contour LasSO model to extract the contour feature of the 3D spiral CT damage image and enhances the information by sharpening the template en.hancement technique and makes the noise separation of the 3D spiral CT damage image.The spiral CT image was procesed with ENT,and the statistical shape model of 3D spiral CT damage image was established.The.gradient algorithm is used to decompose the feature to realize the analysis and reconstruction of the contour feature of the 3D spiral CT damage image,so as to improve the adaptive feature matching ability and the ability to locate the abnormal feature points.The simulation results show that in the 3D spiral CT damage image contour reconstruction,the proposed method performs well in the feature matching of the output pixels,shortens the contour reconstruction time by 20/ms,and provides a strong ability to express the image information.The normalized reconstruction error of CES is 30%,which improves the recognition ability of 3D spiral CT damage image,and increases the signal-to noise ratio of peak output by 40 dB over other methods. 展开更多
关键词 Spiral CT three dimensional image contour feature extraction sharpening template en hancement
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Automatic Body Feature Extraction from Front and Side Images 被引量:3
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作者 Lingyan Jiang Jian Yao +3 位作者 Baopu Li Fei Fang Qi Zhang Max Q.-H. Meng 《Journal of Software Engineering and Applications》 2012年第12期94-100,共7页
Human body feature extraction based on 2D images provides an efficient method for many applications, e.g. non-contact body size measurements, constructing 3D human model and recognizing human actions. In this paper a ... Human body feature extraction based on 2D images provides an efficient method for many applications, e.g. non-contact body size measurements, constructing 3D human model and recognizing human actions. In this paper a systematic approach is proposed to detect feature points of human body automatically from its front and side images. Firstly, an efficient approach for silhouette and contour detection is used to represent the contour curves of a human body shape with Freeman’s 8-connected chain codes. The contour curves are considered as a number of segments connected together. Then, a series of feature points on human body are extracted based on the specified rules by measuring the differences between the directions of the segments. In total, 101 feature points with clearly geometric properties (that rather accurately reflect the bump or turning of the contours) are extracted automatically, including 27 points corresponding to the definitions of the landmarks about garment measurements. Finally, the proposed approach was tested on ten human subjects and the entire 101 feature points with specific geography geometrical characteristics were correctly extracted, indicating an effective and robust performance. 展开更多
关键词 SILHOUETTE detection contour representation Human FEATURE point extractION
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An improved Alpha-shape algorithm for extracting section contours of the super-high steel bridge tower using point clouds
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作者 ZHANG Yiming ZHAO Tianhao +2 位作者 LIAO Ruixuan LI Haoqing WANG Hao 《Journal of Southeast University(English Edition)》 2026年第1期26-35,共10页
The virtual preassembly of super-high steel bridge towers faces a challenge in the efficient and precise extraction of complex cross-sectional features.Factors such as fabrication errors,gravity-induced deformations,a... The virtual preassembly of super-high steel bridge towers faces a challenge in the efficient and precise extraction of complex cross-sectional features.Factors such as fabrication errors,gravity-induced deformations,and temperature fluctuations can compromise the accuracy of contour extraction.To address these limitations,an improved Alpha-shape-based point cloud contour extraction method is proposed.The proposed approach uses a hierarchical strategy to process three-dimensional laser scanning point clouds.The processed data are then subjected to curvatureadaptive voxel filtering to reduce acquisition noise.In addition,an enhanced iterative closest point(ICP)variant with correspondence validation accurately aligns the discrete point cloud segments.The proposed curvature-responsive Alpha-shape framework enables multiscale contour delineation through topology-adaptive threshold modulation,which resolves boundary ambiguities in geometrically complex cross-sections.The method was experimentally validated using field-acquired measurement datasets from the Zhangjinggao Yangtze River Bridge tower segments,confirming its capability to reconstruct noncanonical cross-sectional geometries.Three contour extraction methods,including Poisson reconstruction,the conventional Alpha-shape algorithm,and random sample consensus with ICP(RANSAC-ICP),were compared to evaluate the performance of the proposed Alpha-shape algorithm.The results demonstrate that the proposed method achieves superior contour extraction accuracy and data reduction efficiency,highlighting its effectiveness in contour extraction tasks. 展开更多
关键词 super-high steel bridge tower point cloud contour extraction improved Alpha-shape algorithm
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基于深度学习的激光雷达图像移动目标轮廓线提取方法
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作者 张化凯 梁越 陈忠军 《激光杂志》 北大核心 2025年第10期206-212,共7页
在对激光雷达图像进行移动目标轮廓线提取时,由于受到复杂场景中遮挡以及激光雷达扫描误差等因素干扰,容易存在目标轮廓线提取精度、效率不足的问题。为解决这一问题,文章提出基于深度学习的激光雷达图像移动目标轮廓线提取方法。本方... 在对激光雷达图像进行移动目标轮廓线提取时,由于受到复杂场景中遮挡以及激光雷达扫描误差等因素干扰,容易存在目标轮廓线提取精度、效率不足的问题。为解决这一问题,文章提出基于深度学习的激光雷达图像移动目标轮廓线提取方法。本方法首先通过GMM模型获取到背景图像,根据ViBe算法将阴影检测结果与前景结果相融合,以此消除图像中的阴影,提升初始图像质量;然后利用全卷积单阶段目标检测模型展开更精确的移动目标检测,以便后续的轮廓线提取;最后依据方向预测规则化算法获取移动目标的轮廓线,从而实现激光雷达图像移动目标轮廓线提取。仿真实验结果表明,所提方法在目标轮廓线的提取上展现出了高效性与准确性,可有效提高轮廓线的提取效率,应用效果较好。 展开更多
关键词 提取轮廓线 ViBe算法 GMM模型 移动目标检测 全卷积网络
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一维纳米栅格(100、200 nm)国家计量比对中传递标准测量方法研究
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作者 王芳 施玉书 +1 位作者 皮磊 张树 《计量学报》 北大核心 2025年第9期1294-1299,共6页
基于中国计量科学研究院的毫米级纳米几何结构样板标准装置,以及一维纳米栅格国家计量比对的100 nm与200 nm传递标准,开展了一维栅格测量方法研究,着重研究了栅格轮廓提取方法和基于重心法的栅格周期评价方法,经不确定度评定传递标准的... 基于中国计量科学研究院的毫米级纳米几何结构样板标准装置,以及一维纳米栅格国家计量比对的100 nm与200 nm传递标准,开展了一维栅格测量方法研究,着重研究了栅格轮廓提取方法和基于重心法的栅格周期评价方法,经不确定度评定传递标准的不确定度小于1 nm。规范了栅格测量方法,有效地减少了测量过程中引入的人为误差,提升国内纳米栅格计量能力以及测量量值与测量结果的准确一致程度。 展开更多
关键词 纳米计量 一维栅格 校准 国家计量比对 不确定度评定 栅格轮廓提取 栅格周期评价 重心法
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融合双尺度特征的草图化三维零件库检索方法
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作者 黄沈权 王宗明 +2 位作者 张勇 于鲁川 陈子瑞 《计算机辅助设计与图形学学报》 北大核心 2025年第12期2099-2111,共13页
基于草图的三维模型检索是机械零件库中三维模型检索的重要途径.草图和三维模型之间存在着巨大的模态差异,针对三维模型投影出的多个视图的信息冗余,零件视图提取的特征的表征能力弱的问题,为了提高基于草图的零件三维模型检索的效果,... 基于草图的三维模型检索是机械零件库中三维模型检索的重要途径.草图和三维模型之间存在着巨大的模态差异,针对三维模型投影出的多个视图的信息冗余,零件视图提取的特征的表征能力弱的问题,为了提高基于草图的零件三维模型检索的效果,通过融合零件模型的局部和全局的双尺度特征,提出一种草图化三维机械零件库检索方法.首先提出基于图像熵的三维模型投影视图表达方法,减少多个视图之间的冗余性;然后提出面向零件视图边缘轮廓提取的mechanical sketch模型,深度提取零件的轮廓草图,以逼近视图和草图的相似性;最后构建视觉词袋模型和改进的多视图卷积神经网络模型来分别提取轮廓草图的局部特征和全局特征,通过融合双尺度特征,采用欧几里得距离进行基于草图的零件三维模型匹配.在扩充的ESB数据集上的实验结果表明,所提方法在准确率和召回率等系列评价指标上,相较文中对比的6种方法,有了较为明显的提高,验证了所提方法的可行性和有效性. 展开更多
关键词 零件草图 三维模型 边缘轮廓 特征提取 特征融合 检索系统
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基于U-Net的工件轮廓提取方法的研究 被引量:1
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作者 郭凯旋 王吉芳 +1 位作者 刘相权 王凯 《组合机床与自动化加工技术》 北大核心 2025年第4期8-12,共5页
工件轮廓提取是实现工件识别和定位的重要前提,为解决传统机器视觉算法对复杂环境中的工件轮廓提取不完整、易受干扰的问题,提出了一种改进U-Net的工件轮廓分割模型,将VGG16网络应用于解码器部分,增加网络特征提取能力;将ECA注意力机制... 工件轮廓提取是实现工件识别和定位的重要前提,为解决传统机器视觉算法对复杂环境中的工件轮廓提取不完整、易受干扰的问题,提出了一种改进U-Net的工件轮廓分割模型,将VGG16网络应用于解码器部分,增加网络特征提取能力;将ECA注意力机制引入每个跳跃连接层中,提高了工件轮廓特征在模型中的权重;在编码器末端引入ASPP空洞空间卷积池化金字塔模块,以获取高层特征图中不同尺度的特征信息,进而提高目标的分割精度。试验结果表明,EVA-UNet模型在交并比、召回率、精准率和综合性能F1分数4个方面表现良好,对工件轮廓提取能力优于其他经典模型,能够为实现复杂环境下工件轮廓提取提供良好的解决方案。 展开更多
关键词 注意力机制模块 轮廓提取 语义分割 工件轮廓
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