Abstract

A tremendous amount of work has been conducted in content-based image retrieval (CBIR) on designing effective index structure to accelerate the retrieval process. Most of them improve the retrieval efficiency via complex index structures, and few take into account the parallel implementation of them on underlying hardware, making the existing index structures suffer from low-degree of parallelism. In this paper, a novel graphics processing unit (GPU) adaptive index structure, termed as plane semantic ball (PSB), is proposed to simultaneously reduce the work of retrieval process and exploit the parallel acceleration of underlying hardware. In PSB, semantics are embedded into the generation of representative pivots and multiple balls are selected to cover more informative reference features. With PSB, the online retrieval of CBIR is factorized into independent components that are implemented on GPU efficiently. Comparative experiments with GPU-based brute force approach demonstrate that the proposed approach can achieve high speedup with little information loss. Furthermore, PSB is compared with the state-of-the-art approach, random ball cover (RBC), on two standard image datasets, Corel 10 K and GIST 1 M. Experimental results show that our approach achieves higher speedup than RBC on the same accuracy level.

Highlights

  • With the popularity of high-end digital imaging device and convenient image storage system, the amount of highquality images is growing exponentially

  • The proposed approach is evaluated on standard image dataset Corel 10 K and GIST 1 M, which are widely used in the literature for Content-based image retrieval (CBIR) performance evaluation

  • To overcome the computational complexity of CBIR, a novel graphics processing unit (GPU)-adaptive index structure is proposed in this paper to simultaneously prune unnecessary computations and leverage the parallel processing capability of GPU

Read more

Summary

Introduction

With the popularity of high-end digital imaging device and convenient image storage system, the amount of highquality images is growing exponentially. Content-based image retrieval (CBIR) is one of the desirable solutions to return similar images for a given query instance automatically based on pure visual analysis and similarity comparison [1, 2]. CBIR represents the visual content of image with lowlevel descriptors via feature extraction. With the extracted visual features, similarities between query images and images in database are calculated and sorted, and the most similar image is returned. For a given query image, response time of retrieval depends on the complexity of similarity comparison, which is further determined by the dimension of image feature and image database size. High dimensional feature is needed to represent the complex image content, which is generated from high quality imaging devices. Large quantities of images are produced from portable image capturing devices

Objectives
Results
Conclusion
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