Corpus ID: 2408866

CBIR BASED ON COLOR AND TEXTURE

@inproceedings{Thawari2011CBIRBO,
  title={CBIR BASED ON COLOR AND TEXTURE},
  author={P. B. Thawari and Nitin J. Janwe},
  year={2011}
}
In this paper a generalized approach for image retrieval based on semantic contents is presented. The method presents feature extraction techniques namely color and texture histogram descriptor. There is a provision to add new features in future for better retrieval efficiency. Any combination of these methods, which is more appropriate for the application, can be used for retrieval. The image properties are analyzed in this work by using image processing algorithms. For color the histogram of… Expand

Figures and Tables from this paper

Efficient image retrieval based on texture features
TLDR
A quick and accurate algorithm for content-based image retrieval (CBIR) is proposed in this paper to convert the RGB color image into grayscale image to reduce the computation speed and increase efficiency. Expand
Comparative Study on CBIR based on Color Feature
TLDR
This paper presents a comparative study between the feature extraction techniques that based on color feature, including Color Histogram, HSV color Histogram and Color Histograms Equalization, using two approaches: Euclidean distance and correlation coefficients. Expand
Image retrieval using contribution-based clustering algorithm with different feature extraction techniques
  • Snehal Mahajan, D. Patil
  • Computer Science
  • 2014 Conference on IT in Business, Industry and Government (CSIBIG)
  • 2014
TLDR
Different feature extraction techniques with contribution based clustering algorithm to retrieve the similar images from database using LBP, a new rotation invariant texture measure which improves the Precision, recall and f-measure value of image retrieval. Expand
Image Retrieval using Classification based on Color
TLDR
The proposed method uses two color spaces to form two feature vectors and then uses Euclidean distance to categorize images on the basis of color and which limits the search to specific category, which results in speedy retrieval. Expand
Efficient Content Based Image Retrieval Using Color and Texture
Image classification is perhaps the most important part of digital image analysis. Retrieval patternbased learning is the most effective that aim to establish the relationship between the current andExpand
Efficient Content Based Image Retrieval Using Color and Texture
Image classification is perhaps the most important part of digital image analysis. Retrieval patternbased learning is the most effective that aim to establish the relationship between the current andExpand
Content Based Image Retrieval using Color, Texture and Shape features for fruit images
In this paper Color, Texture and shape feature is used for retrieval of fruit images from database .The database contains a wide variety of fruit images. Moreover success of CBIR depends on theExpand
MEAN AND STANDARD DEVIATION FEATURES OF COLOR HISTOGRAMUSING LAPLACIAN FILTER FOR CONTENT-BASED IMAGE RETRIEVAL
Due to the development and improvement in internet with high speed for the last few years andthe availability of a large digital image collection, efficient image retrieval systems are required.Expand
MEAN AND STANDARD DEVIATION FEATURES OF COLOR HISTOGRAMUSING LAPLACIAN FILTER FOR CONTENT-BASED IMAGE RETRIEVAL
Due to the development and improvement in internet with high speed for the last few years andthe availability of a large digital image collection, efficient image retrieval systems are required.Expand
Features Analysis for Content-Based Image Retrieval Based on Color Moments
TLDR
In this study an efficient and accurate algorithm is proposed for Content-Based Image Retrieval (CBIR) and the results show that the proposed CBIR algorithm provides higher performance in terms of efficiency and accuracy. Expand
...
1
2
3
4
...

References

SHOWING 1-10 OF 10 REFERENCES
A Universal Model for Content-Based Image Retrieval
TLDR
A novel approach for generalized image retrieval based on semantic contents is presented, a combination of three feature extraction methods namely color, texture, and edge histogram descriptor, developed based on greedy strategy. Expand
Comparison Between Color and Texture Features for Image Retrieval
Content-Based Image Retrieval (CBIR) systems are used in order to automatically index, search, retrieve, and browse image databases. Color and texture features are important properties inExpand
CBIR USING COLOR HISTOGRAM PROCESSING
Advances in data storage and image acquisition technologies have enabled the creation of large image datasets. In this scenario, it is necessary to develop appropriate information systems toExpand
An efficient method for content based image retrieval using histogram graph
TLDR
A new technique to compare image similarity, called HISG (histogram graph), that utilizes a weighted undirected graph for each color, and its each vertex is a bin of histogram. Expand
Evaluation of Content Based Image Retrieval Systems Based on Color Feature
The inevitable growth in computer field brought a significant increase for storing large amount of images along with different kinds of complexity aspects. The need for efficient storage andExpand
A probabilistic architecture for content-based image retrieval
  • N. Vasconcelos, A. Lippman
  • Computer Science
  • Proceedings IEEE Conference on Computer Vision and Pattern Recognition. CVPR 2000 (Cat. No.PR00662)
  • 2000
TLDR
A solution where all the modules strive to optimize the same performance criteria: the probability of retrieval error is presented, which consists of a Bayesian retrieval criteria and an embedded mixture representation over a multiresolution feature space. Expand
Human color perception in the HSV space and its application in histogram generation for image retrieval
TLDR
This work determines relative importance of hue and intensity based on the saturation of an image pixel with respect to rod and cone cells excitation of retina and effectively applies this method to the generation of a color histogram and uses it for content-based image retrieval applications. Expand
Content-Based Image Retrieval: Theory and Applications
TLDR
The problems and challenges with the creation of CBIR systems are introduced, the existing solutions and appl ications are described, and the state of the art of the existing research in this area is presented. Expand
Content- Based Image Retrieval: Theory and Applications”, RITA
  • Número
  • 2006
Perceptually Smooth Histogram Generation from the HSV Color Space for Content Based Image Retrieval