Abstract

Currently, a huge amount of visual data such as digital images and videos have been collected by visual sensor nodes, that is, camera nodes, and distributed on visual sensor networks. Among the visual data, there are a lot of near-duplicate images, which cause a serious waste of limited storage, computing, and transmission resources of visual sensor networks and a negative impact on users’ experience. Thus, near-duplicate image elimination is urgently demanded. This article proposes a fast and accurate near-duplicate elimination approach for visual sensor networks. First, a coarse-to-fine clustering method based on a combination of global feature and local feature is proposed to cluster near-duplicate images. Then in each near-duplicate group, we adopt PageRank algorithm to analyze the contextual relevance among images to select and reserve seed image and remove the others. The experimental results prove that the proposed approach achieves better performances in the aspects of both efficiency and accuracy compared with the state-of-the-art approaches.

Highlights

  • With the rapid developments of sensor technology, wireless networking, and distributed computing, visual sensor networks (VSNs) have emerged as an important part of Internet of Things (IOT), which can support many visual applications such as security surveillance and environmental monitoring.[1]

  • Similar to the other networks researched in Ma et al.,[2] VSNs contain a number of distributed visual sensor nodes, that is, camera nodes, which have appeared in many products such as mobile phones, drones, and robots

  • We review the related work of near-duplicate image elimination in section ‘‘Related work.’’ In section ‘‘The proposed near-duplicate elimination approach for VSNs,’’ the proposed near-duplicate image elimination approach is detailed

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Summary

Introduction

With the rapid developments of sensor technology, wireless networking, and distributed computing, visual sensor networks (VSNs) have emerged as an important part of Internet of Things (IOT), which can support many visual applications such as security surveillance and environmental monitoring.[1].

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Conclusion

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