Using Latent Semantic Index for Content-Based Image Retrieval
Journal: International Journal of Science and Research (IJSR) (Vol.4, No. 12)Publication Date: 2015-12-05
Authors : Andy; Bernardus Ari Kuncoro;
Page : 361-364
Keywords : image feature extractions; latent semantic indexing; content-based image retrieval;
Abstract
In this paper, the latent semantic indexing (LSI) based method was used to the various image feature extracted matrix in order to perform content-based image retrieval. The feature extraction techniques include color histogram, color auto-gram, color moment, gray-scale, and wavelet moment. The implementation of LSI here is to achieve an improved image retrieval performance, because it reduces the size of input image matrix by determining parameter of k. The objective of this paper is to know the performance of LSI-based CBIR using precision and recall parameters for each feature extractions.
Other Latest Articles
- Testing of Google Earth Coordinates of Points in Baghdad City
- A Survey on Dataset Recognition of 3D Face with Missing Parts
- A Novel Approach for Load Balancing in Distributed System using FIFO-Support Vector Machine (FIFOSVM)
- Magnetic Repulsion Piston Engine
- Clinical Study to Evaluate Role of Autogeneous Graft in ACL Reconstruction using Two Different Techniques
Last modified: 2021-07-01 14:28:06