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An Efficient Deep Learning-based Content-based Image Retrieval Framework 被引量:1
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作者 M.Sivakumar N.M.Saravana Kumar N.Karthikeyan 《Computer Systems Science & Engineering》 SCIE EI 2022年第11期683-700,共18页
The use of massive image databases has increased drastically over the few years due to evolution of multimedia technology.Image retrieval has become one of the vital tools in image processing applications.Content-Base... The use of massive image databases has increased drastically over the few years due to evolution of multimedia technology.Image retrieval has become one of the vital tools in image processing applications.Content-Based Image Retrieval(CBIR)has been widely used in varied applications.But,the results produced by the usage of a single image feature are not satisfactory.So,multiple image features are used very often for attaining better results.But,fast and effective searching for relevant images from a database becomes a challenging task.In the previous existing system,the CBIR has used the combined feature extraction technique using color auto-correlogram,Rotation-Invariant Uniform Local Binary Patterns(RULBP)and local energy.However,the existing system does not provide significant results in terms of recall and precision.Also,the computational complexity is higher for the existing CBIR systems.In order to handle the above mentioned issues,the Gray Level Co-occurrence Matrix(GLCM)with Deep Learning based Enhanced Convolution Neural Network(DLECNN)is proposed in this work.The proposed system framework includes noise reduction using histogram equalization,feature extraction using GLCM,similarity matching computation using Hierarchal and Fuzzy c-Means(HFCM)algorithm and the image retrieval using DLECNN algorithm.The histogram equalization has been used for computing the image enhancement.This enhanced image has a uniform histogram.Then,the GLCM method has been used to extract the features such as shape,texture,colour,annotations and keywords.The HFCM similarity measure is used for computing the query image vector's similarity index with every database images.For enhancing the performance of this image retrieval approach,the DLECNN algorithm is proposed to retrieve more accurate features of the image.The proposed GLCM+DLECNN algorithm provides better results associated with high accuracy,precision,recall,f-measure and lesser complexity.From the experimental results,it is clearly observed that the proposed system provides efficient image retrieval for the given query image. 展开更多
关键词 content based image retrieval(CBIR) improved gray level cooccurrence matrix(GLCM) hierarchal and fuzzy C-means(HFCM)algorithm deep learning based enhanced convolution neural network(DLECNN)
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2D matrix based indexing with color spectralhistogram for efficient image retrieval
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作者 maruthamuthu ramasamy john sanjeev kumar athisayam 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2016年第5期1122-1134,共13页
A novel content based image retrieval (CBIR) algorithmusing relevant feedback is presented. The proposed frameworkhas three major contributions: a novel feature descriptor calledcolor spectral histogram (CSH) to ... A novel content based image retrieval (CBIR) algorithmusing relevant feedback is presented. The proposed frameworkhas three major contributions: a novel feature descriptor calledcolor spectral histogram (CSH) to measure the similarity betweenimages; two-dimensional matrix based indexing approach proposedfor short-term learning (STL); and long-term learning (LTL).In general, image similarities are measured from feature representationwhich includes color quantization, texture, color, shapeand edges. However, CSH can describe the image feature onlywith the histogram. Typically the image retrieval process starts byfinding the similarity between the query image and the imagesin the database; the major computation involved here is that theselection of top ranking images requires a sorting algorithm to beemployed at least with the lower bound of O(n log n). A 2D matrixbased indexing of images can enormously reduce the searchtime in STL. The same structure is used for LTL with an aim toreduce the amount of log to be maintained. The performance ofthe proposed framework is analyzed and compared with the existingapproaches, the quantified results indicates that the proposedfeature descriptor is more effectual than the existing feature descriptorsthat were originally developed for CBIR. In terms of STL,the proposed 2D matrix based indexing minimizes the computationeffort for retrieving similar images and for LTL, the proposed algorithmtakes minimum log information than the existing approaches. 展开更多
关键词 content based image retrieval (CBIR) color spectralhistogram (CSH) short-term learning (STL) long-term learning(LTL) similarity measures.
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Shift Invariance Level Comparison of Several Contourlet Transforms and Their Texture Image Retrieval Systems
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作者 Xinwu Chen Jingjing Xue +1 位作者 Zhen Liu Wenjuan Ma 《Journal of Signal and Information Processing》 2016年第1期1-6,共6页
In this paper, we proposed a metric to measure the shift invariance of the three different contourlet transforms. And then, using the same structure texture image retrieval system which use subband coefficients energy... In this paper, we proposed a metric to measure the shift invariance of the three different contourlet transforms. And then, using the same structure texture image retrieval system which use subband coefficients energy, standard deviation and kurtosis features with Canberra distance, we gave a comparison of their texture description abilities. Experimental results show that contourlet-2.3 texture image retrieval system has almost retrieval rates with non-sub sampled contourlet system;the two systems have better retrieval results than the original contourlet retrieval system. On the other hand, for the relatively lower redundancy, we recommend using contourlet- 2.3 as texture description transform. 展开更多
关键词 content Based Texture Image retrieval Shift Invariance Level Contourlet Transform Contourlet-2.3
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A comprehensive review of significant researches on content based indexing and retrieval of visual information 被引量:3
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作者 R. PRIYA T. N. SHANMUGAM 《Frontiers of Computer Science》 SCIE EI CSCD 2013年第5期782-799,共18页
Developments in multimedia technologies have paved way for the storage of huge collections of video doc- uments on computer systems. It is essential to design tools for content-based access to the documents, so as to ... Developments in multimedia technologies have paved way for the storage of huge collections of video doc- uments on computer systems. It is essential to design tools for content-based access to the documents, so as to allow an efficient exploitation of these collections. Content based anal- ysis provides a flexible and powerful way to access video data when compared with the other traditional video analysis tech- niques. The area of content based video indexing and retrieval (CBVIR), focusing on automating the indexing, retrieval and management of video, has attracted extensive research in the last decade. CBVIR is a lively area of research with endur- ing acknowledgments from several domains. Herein a vital assessment of contemporary researches associated with the content-based indexing and retrieval of visual information. In this paper, we present an extensive review of significant researches on CBV1R. Concise description of content based video analysis along with the techniques associated with the content based video indexing and retrieval is presented. 展开更多
关键词 nultimedia information content based video retrieval (CBVR) content based video indexing and retrieval (CBVIR) shot segmentation object segmentation feature extraction INDEXING motion estimation QUERYING key frame retrieval and indexing.
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Hyperspectral feature recognition based on kernel PCA and relational perspective map 被引量:4
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作者 苏红军 盛业华 《Chinese Optics Letters》 SCIE EI CAS CSCD 2010年第8期811-814,共4页
A novel joint kernel principal component analysis (PCA) and relational perspective map (RPM) method called KPmapper is proposed for hyperspectral dimensionality reduction and spectral feature recognition. Kernel P... A novel joint kernel principal component analysis (PCA) and relational perspective map (RPM) method called KPmapper is proposed for hyperspectral dimensionality reduction and spectral feature recognition. Kernel PCA is used to analyze hyperspectral data so that the major information corresponding to features can be better extracted. RPM is used to visualize hyperspectral data through two-dimensional (2D) maps, and it is an efficient approach to discover regularities and extract information by partitioning the data into pieces and mapping them onto a 2D space. The experimental results prove that the KPmapper algorithm can effectively obtain the intrinsic features in nonlinear high dimensional data. It is useful and impressing for dimensionality reduction and spectral feature recognition. 展开更多
关键词 Clustering algorithms content based retrieval Principal component analysis
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Spectral feature matching based on partial least squares 被引量:1
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作者 延伟东 田铮 +1 位作者 潘璐璐 丁明涛 《Chinese Optics Letters》 SCIE EI CAS CSCD 2009年第3期201-205,共5页
We investigate the spectral approaches to the problem of point pattern matching, and present a spectral feature descriptors based on partial least square (PLS). Given keypoints of two images, we define the position ... We investigate the spectral approaches to the problem of point pattern matching, and present a spectral feature descriptors based on partial least square (PLS). Given keypoints of two images, we define the position similarity matrices respectively, and extract the spectral features from the matrices by PLS, which indicate geometric distribution and inner relationships of the keypoints. Then the keypoints matching is done by bipartite graph matching. The experiments on both synthetic and real-world data corroborate the robustness and invariance of the algorithm. 展开更多
关键词 content based retrieval Curve fitting Drug products Graph theory Image processing Pattern matching
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