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research-article

Local track to detect for video object detection

Published: 01 January 2021 Publication History

Abstract

The existing methods for video object detection are generally achieved from searching the objects through the entire image. However, they always suffer from large computation consumption as a result of dozens of similar images needing to be operated. To relieve this problem, we propose a Local Track to Detect (LTD) framework to detect video objects by predicting the movements of objects in local areas. LTD can automatically determine key frames and non-key frames, the objects in key frames can be detected by the single frame detector, and the objects in non-key frames can be efficiently detected by the movement prediction module. LTD also has a Siamese module to predict whether objects between the key frame and the non-key frame are the same object to ensure the accuracy of the movement prediction module. Compared with other previous work, our method is more efficient and achieves state-of-the-art performance.

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  1. Local track to detect for video object detection
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        Published In

        cover image International Journal of Computer Applications in Technology
        International Journal of Computer Applications in Technology  Volume 67, Issue 2-3
        2021
        204 pages
        ISSN:0952-8091
        EISSN:1741-5047
        DOI:10.1504/ijcat.2021.67.issue-2-3
        Issue’s Table of Contents

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        Inderscience Publishers

        Geneva 15, Switzerland

        Publication History

        Published: 01 January 2021

        Author Tags

        1. video object detection
        2. local detection
        3. detect and track
        4. movement prediction
        5. efficient detection
        6. CNN

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