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Region-based CNN for Logo Detection

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Published:19 August 2016Publication History

ABSTRACT

Logo detection has been extensively studied because of its applications in many fields. Most existing studies for logo detection are based on hand-designed local features which have certain limitations. Recently, Convolutional Neural Networks (CNN), especially the series of region-based CNN (R-CNN) have achieved great success in general object detection due to its power of feature learning and representation. There are also few work on logo detection based on R-CNN, showing its superiority. However, logo detection presents its own challenges compared to general object detection. In this paper, we aim to experimentally investigate the appropriate architecture and settings of R-CNN for logo detection, by comparing several popular frameworks of R-CNN and considering the characteristics of logo objects in images. We expect our results will be helpful for designing a state-of-the-art logo detection system using handy machine learning techniques.

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  • Published in

    cover image ACM Other conferences
    ICIMCS'16: Proceedings of the International Conference on Internet Multimedia Computing and Service
    August 2016
    360 pages
    ISBN:9781450348508
    DOI:10.1145/3007669

    Copyright © 2016 ACM

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    Association for Computing Machinery

    New York, NY, United States

    Publication History

    • Published: 19 August 2016

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    • short-paper
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    • Refereed limited

    Acceptance Rates

    ICIMCS'16 Paper Acceptance Rate77of118submissions,65%Overall Acceptance Rate163of456submissions,36%

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