A Robust CBIR Approach Using Local Color Histograms

@inproceedings{Wang2001ARC,
  title={A Robust CBIR Approach Using Local Color Histograms},
  author={Shengjiu Wang},
  year={2001}
}
Global color histograms are well-known as a simple and often way to perform color-based image retrieval. However, it lacks spatial information about the image colors. The use of a grid of cells superimposed on the images and the use of local color histograms for each such cell improves retrieval in the sense that some notion of color location is taken into account. In such an approach however, retrieval becomes sensitive to image rotation and translation. In this thesis we present a new way to… Expand
Robust color-based image retrieval using bipartite graphs
  • M. Nascimento, S. Wang
  • Computer Science
  • Proceedings. IEEE International Conference on Multimedia and Expo
  • 2002
TLDR
This short paper presents a new way to model image similarity, also using colors and a superimposing grid, via bipartite graphs, which is able to take advantage of color location but is no longer sensitive to rotation and translation. Expand
Cell Histograms Versus Color Histograms for Image Representation and Retrieval
TLDR
The proposed approach, based on the well-known and widely used color histograms, uses a cell histogram for each of the colors actually present in the images, representing how that color is distributed among the image cells -- hence the name Cell/Color Histograms. Expand
Gradual Integration of Local Color information for Image Retrieval by Content: Application to Cell-CCV Method
TLDR
Gradual Cell Color Coherence Vector (G-Cell-CCV) is proposed, a local color based method that reflects both color and spatial properties of an image and requires less space and computing time overheads than Local Color Histogram descriptor. Expand
Efficient Cbir Using Color Histogram Processing
TLDR
It is found that further modifications are needed to produce better performance in searching images, and cross correlation value & image descriptor attributes are calculated prior histogram implementation to make CBIR system more efficient. Expand
Color based properties query for CBIR: HSV global color histogram
TLDR
This project focuses on color image features by applying global color histogram matching technique for HSV color space and finds the retrieval obtained was good and some importing to consider for the future research is suggested. Expand
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
Image retrieval based on non-uniform bins of color histogram and dual tree complex wavelet transform
TLDR
The presented scheme has reduced the processing cost due to the consideration of a hierarchical approach and is suitable to handle mirror images during the retrieval process. Expand
Region-Based Image Retrieval Using Multiple-Features
TLDR
This paper proposes a retrieval technique that utilizes the regional properties of the images that is robust to minor inaccuracy in image segmentation, is invariant to scaling and can perceive geometric changes like translation and rotation. Expand
CBIR Based on Colour Fiture Extraction with Java
Text-based image retrieval techniques that exist today can not be used to represent the image that we seek in an image database, which is often obtained by the image search results that are notExpand
AN EFFICIENT CONTENT BASED IMAGE RETRIEVAL METHOD FOR RETRIEVING IMAGES
TLDR
The experimental results show that the proposed technique to improve the retrieval process by image regions matching is more effective than the other retrieval techniques such as color histogram based and Color Based Clustering based techniques. Expand
...
1
2
3
4
5
...

References

SHOWING 1-10 OF 59 REFERENCES
Similarity of color images
TLDR
Two new color indexing techniques are described, one of which is a more robust version of the commonly used color histogram indexing and the other which is an example of a new approach tocolor indexing that contains only their dominant features. Expand
An integrated color-spatial approach to content-based image retrieval
TLDR
A technique of integrating color information with spatial knowledge to obtain an overall impression of the image is discussed, which shows substantial improvement over the histogram-based color retrieval methods. Expand
On “shapes” of colors for content-based image retrieval
TLDR
A new approach for CBIR which is based on well known and widely used color histograms based on a variable number of histograms, depending only on the actual number of colors present in the image is presented. Expand
Comparing images using color coherence vectors
TLDR
It is shown that CCV’s can give superior results to color histogram-based methods for comparing images that incorporates spatial information, and to whom correspondence should be addressed tograms for image retrieval. Expand
Color indexing with weak spatial constraints
TLDR
This work proposes an approach that lies between uniformly tesselating the images with rectangular regions and relying on fully segmented images, and encoding a minimal amount of spatial information in the index to improve the discrimination power of color indexing techniques. Expand
Tools and techniques for color image retrieval
TLDR
This work proposes a technique by which the color content of images and videos is automatically extracted to form a class of meta-data that is easily indexed and evaluates the retrieval effectiveness of the color set back-projection method and compares its performance to other color image retrieval methods. Expand
Color-Based Image Retrieval Using Compact Binary Signatures
Significant research has focused on determining efficient methodologies for retrieving images in large image databases. This thesis addresses the design and implementation of a new image abstractionExpand
Content-based image retrieval: color and edges
TLDR
A simple content-based system that retrieves color images on the basis of their color distributions and edge characteristics and uses two retrieval techniques that have been described in the literature -- i.e. histogram intersection to compare color distribution and sketch comparison to compare edge characteristics. Expand
Periodicity, Directionality, and Randomness: Wold Features for Image Modeling and Retrieval
TLDR
The Wold model appears to offer a perceptually more satisfying measure of pattern similarity while exceeding the performance of these other methods by traditional pattern recognition criteria. Expand
Image indexing using color correlograms
TLDR
Experimental evidence suggests that this new image feature called the color correlogram outperforms not only the traditional color histogram method but also the recently proposed histogram refinement methods for image indexing/retrieval. Expand
...
1
2
3
4
5
...