Deep ensemble architectures with heterogeneous approach for an efficient content-based image retrieval

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Abstract

In the field of digital image processing, content-based image retrieval (CBIR) has become essential for searching images based on visual content characteristics like color, shape, and texture, rather than relying on text-based annotations. To address the increasing demands for efficiency and precision in CBIR systems, we introduce the HybridEnsembleNet methodology. HybridEnsembleNet combines deep learning algorithms with an asymmetric retrieval framework to optimize feature extraction and comparison in extensive image databases. This novel approach, specifically custom-made for CBIR, employs a lightweight query structure skilled at handling large-scale data under resource-constrained environments. The experiments were performed on the ROxford and RParis datasets. The deep learning component of HybridEnsembleNet significantly refines the accuracy of image matching and retrieval. RParis The ROxford dataset, specifically in the medium and hard difficulty benchmarks, demonstrates an enhancement of 5.53% and 10.44%, respectively. Similarly, the RParis dataset, under medium and hard benchmarks, exhibits improvements of 3.01% and 5.83%, showcasing superior performance compared to existing models. By overcoming the traditional limitations of CBIR systems in mean average precision (mAP) metrics, HybridEnsembleNet provides a scalable, efficient, and more accurate solution for retrieving relevant images from vast digital libraries. © 2024, Institute of Advanced Engineering and Science. All rights reserved.

Year of Publication
2024
Journal
IAES International Journal of Artificial Intelligence
Volume
13
Issue
4
Number of Pages
4843-4855,
Type of Article
Article
ISBN Number
20894872 (ISSN)
DOI
10.11591/ijai.v13.i4.pp4843-4855
Publisher
Institute of Advanced Engineering and Science
Journal Article
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