Abstract

Content-based image retrieval involves the extraction of global feature images for their retrieval performance in large image databases. Extraction of global features image cause problem of the semantic gap between the high-level meaning and low-level visual features images. In this study RBIR, Region of Interest Based (ROI) Image Retrieval Using Incremental Frame of Color Image was proposed. It combines several methods, including filtering process, image partitioning using clustering and incremental frame formation, complementation law of theory set to generate ROI, NROI, or ER of the region. The concept of weighting as well as a significant query is also incorporated as a query strategy. Extensive experiments were also conducted on the Wang database and the color model selected was the CIE lab. Experimental results show the proposed method is efficient in image retrieval. The performance of the proposed method shows a better average IPR value of 3.51% compared to RGB and 22.92% with the HSV color model. Meanwhile, it also performs better by 36%, 5%, and 24% compared to methods CH (8,2,2), CH (8,3,3), and CH (16,4,4).

Highlights

  • Despite the many publications using visual features in CBIR to report the performance and significant advances in image retrieval, this technique still shows some limitations

  • We propose a region of interest (ROI) based on image retrieval

  • The results show that the CVAAObased ROI image retrieval method better performance in finding out the database images that meet user requirements

Read more

Summary

Introduction

Despite the many publications using visual features in CBIR to report the performance and significant advances in image retrieval, this technique still shows some limitations. Problem of the semantic gap between the high-level meaning and low-level visual features images. These visuals insufficiently describe some relevant objects or the particular region that the user is interested in (Bchir et al, 2018). Another limitation is their sensitivity to the type the visual features that are extracted from the images. We propose a region of interest (ROI) based on image retrieval. This section covers the process of measuring the similarity and performance of the ROI-based image retrieval. Mamat et al/International Journal of Advanced and Applied Sciences, 9(1) 2022, Pages: 138-147 section 5 elaborates the conclusion of this research

Related works
Step 2
Step 1
Step 3
Step 4
Step 5
Comparison with other research
Findings
Comparison between frames for each category
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call