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논문검색

Combination of Local, Global and k-mean using Wavelet Transform for Content Base Image Retrieval

초록

영어

In today’s time, the requirement of content based image retrieval technique is more and more because of diverse areas such as Data Mining, Remote Sensing and Management of Earth Resources, , Crime Prevention, Weather forecasting, E-commerce, Medical Imaging. The proposed paper presents the content based image retrieval, using features like color and texture, called WBCHIR (Wavelet Based Color Histogram Image Retrieval).The shape and shade features are extracted in the course of wavelet transformation and color histogram and the arrangement of these features is vigorous to scaling and conversion of objects in an image. It is the first time to present segmentation and grid, feature extraction, K-means module and k-nearest neighbor clustering algorithms and bring in the neighborhood module to build the CBIR system. It is the hybrid method of global and local features with k-means clustering algorithm.

목차

Abstract
 1. Introduction
 2. Literature Review
 3. Methodology
 4. Proposed Algorithm
 5. Conclusion
 References

저자정보

  • Ekta Gupta Department of Computer Science & Engineering Institute of Technology & Management Gwalior- India
  • Rajendra Singh Kushwah Department of Computer Science & Engineering Institute of Technology & Management Gwalior- India

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