期刊文献+
共找到2,474篇文章
< 1 2 124 >
每页显示 20 50 100
Separation between water and land in synthetic aperture radar images based on improved level set model
1
作者 Jixiang Liu Xueyun Wei +4 位作者 Junxiao Li Wei Zheng Biao Jin Youbing Feng Caiping Xi 《Acta Oceanologica Sinica》 2025年第7期132-146,共15页
Separation between water and land is vital for marine scientific research and coastal zone planning and management.The contrasting backscatter properties of land and ocean enable clear water edge line identification i... Separation between water and land is vital for marine scientific research and coastal zone planning and management.The contrasting backscatter properties of land and ocean enable clear water edge line identification in synthetic aperture radar(SAR)imagery.However,SAR images are prone to speckle noise,and the complexity of the water-land boundaries environment makes accurate water-land separation challenging.To overcome noise and complex background interference in remote sensing images,an improved level set method was employed to enhance water-land separation.In the traditional distance regularized level set method,the selection of the image correlation weight coefficient and the edge indicator function directly influences the accuracy of the final segmentation results.A novel level set segmentation algorithm incorporating an improved edge indicator function is proposed to efficiently and accurately separate the water edge lines in SAR images.The distance regularized level set evolution model is enhanced by incorporating the signed pressure force function as an adaptive parameter,which serves as an external constraint for curve evolution.A novel level set model with an adaptive edge indicator function,combining gradient and regional information,is proposed.Experimental results demonstrate that the proposed model enhances the accuracy of waterland separation in SAR images.However,further research is needed to evaluate its potential for detecting boundaries in diverse marine environments and across different types of SAR imagery. 展开更多
关键词 water-land separation SAR image segmentation level set
在线阅读 下载PDF
Neural Network Based on Rough Sets and Its Application to Remote Sensing Image Classification 被引量:3
2
作者 WU Zhaocong LI Deren 《Geo-Spatial Information Science》 2002年第2期17-21,共5页
This paper presents a new kind of back propagation neural network(BPNN)based on rough sets,called rough back propagation neural network(RBPNN).The architecture and training method of RBPNN are presented and the survey... This paper presents a new kind of back propagation neural network(BPNN)based on rough sets,called rough back propagation neural network(RBPNN).The architecture and training method of RBPNN are presented and the survey and analysis of RBPNN for the classification of remote sensing multi_spectral image is discussed.The successful application of RBPNN to a land cover classification illustrates the simple computation and high accuracy of the new neural network and the flexibility and practicality of this new approach. 展开更多
关键词 rough sets back propagation neural network remote sensing image classification
在线阅读 下载PDF
New Image Recognition Method Based on Rough-Sets and Fuzzy Theory 被引量:1
3
作者 张艳 李凤霞 战守义 《Journal of Beijing Institute of Technology》 EI CAS 2003年第3期255-259,共5页
A new image recognition method based on fuzzy rough sets theory is proposed, and its implementation discussed. The performance of this method as applied to ferrography image recognition is evaluated. It is shown that... A new image recognition method based on fuzzy rough sets theory is proposed, and its implementation discussed. The performance of this method as applied to ferrography image recognition is evaluated. It is shown that the new method gives better results than fuzzy or rough sets method when used alone. 展开更多
关键词 fuzzy method rough sets theory image recognition
在线阅读 下载PDF
Pseudo-Semi-Overlap Functions-Based Fuzzy Rough Sets Applied to Image Edge Extraction
4
作者 Ran Yin Minge Chen +2 位作者 Yu Liu Yafei Zhao Jianwei Li 《Journal of Applied Mathematics and Physics》 2024年第7期2347-2366,共20页
As an extension of overlap functions, pseudo-semi-overlap functions are a crucial class of aggregation functions. Therefore, (I, PSO)-fuzzy rough sets are introduced, utilizing pseudo-semi-overlap functions, and furth... As an extension of overlap functions, pseudo-semi-overlap functions are a crucial class of aggregation functions. Therefore, (I, PSO)-fuzzy rough sets are introduced, utilizing pseudo-semi-overlap functions, and further extended for applications in image edge extraction. Firstly, a new clustering function, the pseudo-semi-overlap function, is introduced by eliminating the symmetry and right continuity present in the overlap function. The relaxed nature of this function enhances its applicability in image edge extraction. Secondly, the definitions of (I, PSO)-fuzzy rough sets are provided, using (I, PSO)-fuzzy rough sets, a pair of new fuzzy mathematical morphological operators (IPSOFMM operators) is proposed. Finally, by combining the fuzzy C-means algorithm and IPSOFMM operators, a novel image edge extraction algorithm (FCM-IPSO algorithm) is proposed and implemented. Compared to existing algorithms, the FCM-IPSO algorithm exhibits more image edges and a 73.81% decrease in the noise introduction rate. The outstanding performance of (I, PSO)-fuzzy rough sets in image edge extraction demonstrates their practical application value. 展开更多
关键词 Pseudo-Semi-Overlap Functions Fuzzy Rough set Fuzzy Mathematical Morphology image Edge Extraction
在线阅读 下载PDF
Semi-supervised Affinity Propagation Clustering Based on Subtractive Clustering for Large-Scale Data Sets
5
作者 Qi Zhu Huifu Zhang Quanqin Yang 《国际计算机前沿大会会议论文集》 2015年第1期76-77,共2页
In the face of a growing number of large-scale data sets, affinity propagation clustering algorithm to calculate the process required to build the similarity matrix, will bring huge storage and computation. Therefore,... In the face of a growing number of large-scale data sets, affinity propagation clustering algorithm to calculate the process required to build the similarity matrix, will bring huge storage and computation. Therefore, this paper proposes an improved affinity propagation clustering algorithm. First, add the subtraction clustering, using the density value of the data points to obtain the point of initial clusters. Then, calculate the similarity distance between the initial cluster points, and reference the idea of semi-supervised clustering, adding pairs restriction information, structure sparse similarity matrix. Finally, the cluster representative points conduct AP clustering until a suitable cluster division.Experimental results show that the algorithm allows the calculation is greatly reduced, the similarity matrix storage capacity is also reduced, and better than the original algorithm on the clustering effect and processing speed. 展开更多
关键词 subtractive CLUSTERING INITIAL cluster AFFINITY propagation CLUSTERING SEMI-SUPERVISED CLUSTERING large-scale data sets
在线阅读 下载PDF
A new level set model for cell image segmentation 被引量:4
6
作者 马竟锋 侯凯 +1 位作者 包尚联 陈纯 《Chinese Physics B》 SCIE EI CAS CSCD 2011年第2期568-574,共7页
In this paper we first determine three phases of cell images: background, cytoplasm and nucleolus according to the general physical characteristics of cell images, and then develop a variational model, based on these... In this paper we first determine three phases of cell images: background, cytoplasm and nucleolus according to the general physical characteristics of cell images, and then develop a variational model, based on these characteristics, to segment nucleolus and cytoplasm from their relatively complicated backgrounds. In the meantime, the preprocessing obtained information of cell images using the OTSU algorithm is used to initialize the level set function in the model, which can speed up the segmentation and present satisfactory results in cell image processing. 展开更多
关键词 cell image segmentation 3-phase level set OTSU algorithm
原文传递
Image segmentation by level set evolution with region consistency constraint 被引量:5
7
作者 ZHONG Li ZHOU Yuan-feng +2 位作者 ZHANG Xiao-feng GUO Qiang ZHANG Cai-ming 《Applied Mathematics(A Journal of Chinese Universities)》 SCIE CSCD 2017年第4期422-442,共21页
Image segmentation is a key and fundamental problem in image processing,computer graphics,and computer vision.Level set based method for image segmentation is used widely for its topology flexibility and proper mathem... Image segmentation is a key and fundamental problem in image processing,computer graphics,and computer vision.Level set based method for image segmentation is used widely for its topology flexibility and proper mathematical formulation.However,poor performance of existing level set models on noisy images and weak boundary limit its application in image segmentation.In this paper,we present a region consistency constraint term to measure the regional consistency on both sides of the boundary,this term defines the boundary of the image within a range,and hence increases the stability of the level set model.The term can make existing level set models significantly improve the efficiency of the algorithms on segmenting images with noise and weak boundary.Furthermore,this constraint term can make edge-based level set model overcome the defect of sensitivity to the initial contour.The experimental results show that our algorithm is efficient for image segmentation and outperform the existing state-of-art methods regarding images with noise and weak boundary. 展开更多
关键词 level set evolution image segmentation uniformity testing multiple level contours region consistency constraint
在线阅读 下载PDF
New normalized nonlocal hybrid level set method for image segmentation 被引量:1
8
作者 LOU Qiong PENG Jia-lin +1 位作者 KONG De-xing WANG Chun-lin 《Applied Mathematics(A Journal of Chinese Universities)》 SCIE CSCD 2017年第4期407-421,共15页
This article introduces a new normalized nonlocal hybrid level set method for image segmentation.Due to intensity overlapping,blurred edges with complex backgrounds,simple intensity and texture information,such kind o... This article introduces a new normalized nonlocal hybrid level set method for image segmentation.Due to intensity overlapping,blurred edges with complex backgrounds,simple intensity and texture information,such kind of image segmentation is still a challenging task.The proposed method uses both the region and boundary information to achieve accurate segmentation results.The region information can help to identify rough region of interest and prevent the boundary leakage problem.It makes use of normalized nonlocal comparisons between pairs of patches in each region,and a heuristic intensity model is proposed to suppress irrelevant strong edges and constrain the segmentation.The boundary information can help to detect the precise location of the target object,it makes use of the geodesic active contour model to obtain the target boundary.The corresponding variational segmentation problem is implemented by a level set formulation.We use an internal energy term for geometric active contours to penalize the deviation of the level set function from a signed distance function.At last,experimental results on synthetic images and real images are shown in the paper with promising results. 展开更多
关键词 image segmentation level set method nonlocal method intensity information active contours NORMALIZATION
在线阅读 下载PDF
Segmentation Method of Breast Masses on Ultrasonographic Images Using Level Set Method Based on Statistical Model 被引量:1
9
作者 Akiyoshi Hizukuri Ryohei Nakayama Hiroshi Ashiba 《Journal of Biomedical Science and Engineering》 2017年第4期149-162,共14页
It is important to segment mass region accurately in a computer-aided diagnosis (CADx) scheme for evaluating the likelihood of malignancy of the mass on ultrasonographic breast image. The purpose of this study was to ... It is important to segment mass region accurately in a computer-aided diagnosis (CADx) scheme for evaluating the likelihood of malignancy of the mass on ultrasonographic breast image. The purpose of this study was to develop a novel level set method for segmentation of breast mass on ultrasonographic image. Our database consisted of 151 ultrasonographic images with 70 malignant and 81 benign breast masses. In a novel level set method, an energy function was defined with region-based, edge-based, and regularizing terms. The region-based term analyzed global information, whereas the edge-based term analyzed local information. The regularizing term also controlled the length of the boundary curve. The region of breast mass was segmented so that the energy based on those terms was minimized. With our proposed method, true positive (TP) ratio, false positive (FP) ratio, jaccard similarity (JS), and Dice similarity coefficient (DSC) were 92.2%, 9.1%, 84.2%, and 91.3%, respectively. These results tended to be substantially higher than those with two conventional segmentation methods. Our proposed method based on the novel level set method was shown to segment mass region accurately on ultrasonographic breast image. 展开更多
关键词 SEGMENTATION Level set BREAST MASS Ultrasonographic image
暂未订购
Influence of image data set noise on classification with a convolutional network 被引量:2
10
作者 Wei Tao Shuai Liguo Zhang Yulu 《Journal of Southeast University(English Edition)》 EI CAS 2019年第1期51-56,共6页
To evaluate the influence of data set noise, the network in network(NIN) model is introduced and the negative effects of different types and proportions of noise on deep convolutional models are studied. Different typ... To evaluate the influence of data set noise, the network in network(NIN) model is introduced and the negative effects of different types and proportions of noise on deep convolutional models are studied. Different types and proportions of data noise are added to two reference data sets, Cifar-10 and Cifar-100. Then, this data containing noise is used to train deep convolutional models and classify the validation data set. The experimental results show that the noise in the data set has obvious adverse effects on deep convolutional network classification models. The adverse effects of random noise are small, but the cross-category noise among categories can significantly reduce the recognition ability of the model. Therefore, a solution is proposed to improve the quality of the data sets that are mixed into a single noise category. The model trained with a data set containing noise is used to evaluate the current training data and reclassify the categories of the anomalies to form a new data set. Repeating the above steps can greatly reduce the noise ratio, so the influence of cross-category noise can be effectively avoided. 展开更多
关键词 image recognition data set noise deep convolutional network filtering of cross-category noise
在线阅读 下载PDF
An Image Filter Algorithm Using Level Set Based on Discontinuous PDE 被引量:1
11
作者 XIAO Jinsheng YI Benshun +1 位作者 CHEN Guixiang LIN Kaitao 《Wuhan University Journal of Natural Sciences》 CAS 2009年第6期489-493,共5页
An image filter based on nonlinear discontinuous partial differential equation(PDE)is presented.It models a class of morphological image filters called the level set method for gray image processing.We discuss the the... An image filter based on nonlinear discontinuous partial differential equation(PDE)is presented.It models a class of morphological image filters called the level set method for gray image processing.We discuss the theoretical aspects of this PDE.The switch signal is controlled by the discontinuous right hand of PDE.We propose a discrete algorithm for its numerical solution and corresponding filter implementation.The study provides insights via several experiments.These types of filters are very useful in numerical image analyses. 展开更多
关键词 image processing level set discontinuous partial differential equation image filter
原文传递
A NEW UNSUPERVISED CLASSIFICATION ALGORITHM FOR POLARIMETRIC SAR IMAGES BASED ON FUZZY SET THEORY 被引量:2
12
作者 Fu Yusheng Xie Yan Pi Yiming Hou Yinming 《Journal of Electronics(China)》 2006年第4期598-601,共4页
In this letter, a new method is proposed for unsupervised classification of terrain types and man-made objects using POLarimetric Synthetic Aperture Radar (POLSAR) data. This technique is a combi-nation of the usage o... In this letter, a new method is proposed for unsupervised classification of terrain types and man-made objects using POLarimetric Synthetic Aperture Radar (POLSAR) data. This technique is a combi-nation of the usage of polarimetric information of SAR images and the unsupervised classification method based on fuzzy set theory. Image quantization and image enhancement are used to preprocess the POLSAR data. Then the polarimetric information and Fuzzy C-Means (FCM) clustering algorithm are used to classify the preprocessed images. The advantages of this algorithm are the automated classification, its high classifica-tion accuracy, fast convergence and high stability. The effectiveness of this algorithm is demonstrated by ex-periments using SIR-C/X-SAR (Spaceborne Imaging Radar-C/X-band Synthetic Aperture Radar) data. 展开更多
关键词 Radar polarimetry Synthetic Aperture Radar (SAR) Fuzzy set theory Unsupervised classification image quantization image enhancement Fuzzy C-Means (FCM) clustering algorithm Membership function
在线阅读 下载PDF
A CT Image Segmentation Algorithm Based on Level Set Method 被引量:1
13
作者 QU Jing-yi SHI Hao-shan 《Chinese Journal of Biomedical Engineering(English Edition)》 2006年第2期47-52,共6页
Level Set methods are robust and efficient numerical tools for resolving curve evolution in image segmentation. This paper proposes a new image segmentation algorithm based on Mumford-Shah module. The method is used t... Level Set methods are robust and efficient numerical tools for resolving curve evolution in image segmentation. This paper proposes a new image segmentation algorithm based on Mumford-Shah module. The method is used to CT images and the experiment results demonstrate its efficiency and veracity. 展开更多
关键词 MEDICAL image segmentation Level set Mumford-Shah model Curve evolution
暂未订购
Large-scale laboratory investigation of pillar-support interaction
14
作者 Akash Chaurasia Gabriel Walton +4 位作者 Sankhaneel Sinha Timothy J.Batchler Kieran Moore Nicholas Vlachopoulos Bradley Forbes 《Journal of Rock Mechanics and Geotechnical Engineering》 2025年第1期71-93,共23页
Underground mine pillars provide natural stability to the mine area,allowing safe operations for workers and machinery.Extensive prior research has been conducted to understand pillar failure mechanics and design safe... Underground mine pillars provide natural stability to the mine area,allowing safe operations for workers and machinery.Extensive prior research has been conducted to understand pillar failure mechanics and design safe pillar layouts.However,limited studies(mostly based on empirical field observation and small-scale laboratory tests)have considered pillar-support interactions under monotonic loading conditions for the design of pillar-support systems.This study used a series of large-scale laboratory compression tests on porous limestone blocks to analyze rock and support behavior at a sufficiently large scale(specimens with edge length of 0.5 m)for incorporation of actual support elements,with consideration of different w/h ratios.Both unsupported and supported(grouted rebar rockbolt and wire mesh)tests were conducted,and the surface deformations of the specimens were monitored using three-dimensional(3D)digital image correlation(DIC).Rockbolts instrumented with distributed fiber optic strain sensors were used to study rockbolt strain distribution,load mobilization,and localized deformation at different w/h ratios.Both axial and bending strains were observed in the rockbolts,which became more prominent in the post-peak region of the stress-strain curve. 展开更多
关键词 Grouted rockbolt Welded wire mesh Porous limestone Digital image correlation Distributed fiber optic sensing large-scale laboratory tests
在线阅读 下载PDF
Exploratory Research on Defense against Natural Adversarial Examples in Image Classification
15
作者 Yaoxuan Zhu Hua Yang Bin Zhu 《Computers, Materials & Continua》 2025年第2期1947-1968,共22页
The emergence of adversarial examples has revealed the inadequacies in the robustness of image classification models based on Convolutional Neural Networks (CNNs). Particularly in recent years, the discovery of natura... The emergence of adversarial examples has revealed the inadequacies in the robustness of image classification models based on Convolutional Neural Networks (CNNs). Particularly in recent years, the discovery of natural adversarial examples has posed significant challenges, as traditional defense methods against adversarial attacks have proven to be largely ineffective against these natural adversarial examples. This paper explores defenses against these natural adversarial examples from three perspectives: adversarial examples, model architecture, and dataset. First, it employs Class Activation Mapping (CAM) to visualize how models classify natural adversarial examples, identifying several typical attack patterns. Next, various common CNN models are analyzed to evaluate their susceptibility to these attacks, revealing that different architectures exhibit varying defensive capabilities. The study finds that as the depth of a network increases, its defenses against natural adversarial examples strengthen. Lastly, Finally, the impact of dataset class distribution on the defense capability of models is examined, focusing on two aspects: the number of classes in the training set and the number of predicted classes. This study investigates how these factors influence the model’s ability to defend against natural adversarial examples. Results indicate that reducing the number of training classes enhances the model’s defense against natural adversarial examples. Additionally, under a fixed number of training classes, some CNN models show an optimal range of predicted classes for achieving the best defense performance against these adversarial examples. 展开更多
关键词 image classification convolutional neural network natural adversarial example data set defense against adversarial examples
在线阅读 下载PDF
MEDICAL IMAGE SEGMENTATION BASED ON A MODIFIED LEVEL SET ALGORITHM
16
作者 杨勇 林盘 +1 位作者 郑崇勋 顾建文 《Journal of Pharmaceutical Analysis》 SCIE CAS 2005年第1期29-32,56,共5页
Objective To present a novel modified level set algorithm for medical image segmentation. Methods The algorithm is developed by substituting the speed function of level set algorithm with the region and gradient infor... Objective To present a novel modified level set algorithm for medical image segmentation. Methods The algorithm is developed by substituting the speed function of level set algorithm with the region and gradient information of the image instead of the conventional gradient information. This new algorithm has been tested by a series of different modality medical images. Results We present various examples and also evaluate and compare the performance of our method with the classical level set method on weak boundaries and noisy images. Conclusion Experimental results show the proposed algorithm is effective and robust. 展开更多
关键词 medical image segmentation level set speed function region information
在线阅读 下载PDF
Content-Based Image Retrieval:Near Tolerance Rough Set Approach
17
作者 RAMANNA Sheela PETERS James F WU Wei-zhi 《浙江海洋学院学报(自然科学版)》 CAS 2010年第5期462-471,共10页
The problem considered in this paper is how to detect the degree of similarity in the content of digital images useful in image retrieval,i.e.,to what extent is the content of a query image similar to content of other... The problem considered in this paper is how to detect the degree of similarity in the content of digital images useful in image retrieval,i.e.,to what extent is the content of a query image similar to content of other images.The solution to this problem results from the detection of subsets that are rough sets contained in covers of digital images determined by perceptual tolerance relations(PTRs).Such relations are defined within the context of perceptual representative spaces that hearken back to work by J.H.Poincare on representative spaces as models of physical continua.Classes determined by a PTR provide content useful in content-based image retrieval(CBIR).In addition,tolerance classes provide a means of determining when subsets of image covers are tolerance rough sets(TRSs).It is the nearness of TRSs present in image tolerance spaces that provide a promising approach to CBIR,especially in cases such as satellite images or aircraft identification where there are subtle differences between pairs of digital images,making it difficult to quantify the similarities between such images.The contribution of this article is the introduction of the nearness of tolerance rough sets as an effective means of measuring digital image similarities and,as a significant consequence,successfully carrying out CBIR. 展开更多
关键词 Content-Based image retrieval Near sets PERCEPTION Rough sets Tolerance space
在线阅读 下载PDF
Segmentation of Bacteria Image Based on Level Set Method 被引量:1
18
作者 WANG Hua CHEN Chun-xiao +1 位作者 HU Yong-hong YANG Wen-ge 《Chinese Journal of Biomedical Engineering(English Edition)》 2008年第4期146-152,共7页
In biology ferment engineering,accurate statistics of the quantity of bacteria is one of the most important subjects. In this paper,the quantity of bacteria which was observed traditionally manuauy can be detected aut... In biology ferment engineering,accurate statistics of the quantity of bacteria is one of the most important subjects. In this paper,the quantity of bacteria which was observed traditionally manuauy can be detected automatically. Image acquisition and processing system is designed to accomplish image preprocessing,image segmentation and statistics of the quantity of bacteria. Segmentation of bacteria images is successfully realized by means of a region-based level set method and then the quantity of bacteria is computed precisely,which plays an important role in optimizing the growth conditions of bacteria. 展开更多
关键词 bacteria image SEGMENTATION level set method STATISTICS
在线阅读 下载PDF
Robustness Evaluation of Remote-Sensing Image Feature Detectors with TH Priori-Information Data Set
19
作者 Yiping Duan Xiaoming Tao +1 位作者 Xijia Liu Ning Ge 《China Communications》 SCIE CSCD 2020年第10期218-228,共11页
In this paper,we build a remote-sensing satellite imagery priori-information data set,and propose an approach to evaluate the robustness of remote-sensing image feature detectors.The building TH Priori-Information(TPI... In this paper,we build a remote-sensing satellite imagery priori-information data set,and propose an approach to evaluate the robustness of remote-sensing image feature detectors.The building TH Priori-Information(TPI)data set with 2297 remote sensing images serves as a standardized high-resolution data set for studies related to remote-sensing image features.The TPI contains 1)raw and calibrated remote-sensing images with high spatial and temporal resolutions(up to 2 m and 7 days,respectively),and 2)a built-in 3-D target area model that supports view position,view angle,lighting,shadowing,and other transformations.Based on TPI,we further present a quantized approach,including the feature recurrence rate,the feature match score,and the weighted feature robustness score,to evaluate the robustness of remote-sensing image feature detectors.The quantized approach gives general and objective assessments of the robustness of feature detectors under complex remote-sensing circumstances.Three remote-sensing image feature detectors,including scale-invariant feature transform(SIFT),speeded up robust features(SURF),and priori information based robust features(PIRF),are evaluated using the proposed approach on the TPI data set.Experimental results show that the robustness of PIRF outperforms others by over 6.2%. 展开更多
关键词 REMOTE-SENSING TH data set image feature robustness evaluation
在线阅读 下载PDF
The Method of Flotation Froth Image Segmentation Based on Threshold Level Set
20
作者 Ji Zhao Huibin Wang +1 位作者 Lina Zhang Conghui Wang 《Advances in Molecular Imaging》 2015年第2期38-48,共11页
A novel flotation froth image segmentation based on threshold level set method is put forward in view of the problem of over-segmentation and under-segmentation which occurs when the existing method segmented the flot... A novel flotation froth image segmentation based on threshold level set method is put forward in view of the problem of over-segmentation and under-segmentation which occurs when the existing method segmented the flotation froth images. Firstly, the proposed method adopts histogram equalization to improve the contrast of the image, and then chooses the upper threshold and lower threshold from grey value of histogram of the image equalization, and complete image segmentation using the level set method. In this paper, the model which integrates edge with region level set model is utilized, and the speed energy term is introduced to segment the target. Experimental results show that the proposed method has better segmentation results and higher segmentation efficiency on the images with under-segmentation and incorrect segmentation, and it is meaningful for ore dressing industrial. 展开更多
关键词 FLOTATION Froth image Segmentation Active CONTOUR Model HISTOGRAM EQUALIZATION Speed Function THRESHOLD Level set
在线阅读 下载PDF
上一页 1 2 124 下一页 到第
使用帮助 返回顶部