Comprehensive Feature-based Robust Video Fingerprinting Using Tensor Model
Xiushan Nie, Yilong Yin, Jiande Sun

TL;DR
This paper introduces a tensor-based framework for robust video fingerprinting that combines multiple features to improve detection accuracy under various modifications, including combined distortions.
Contribution
It proposes a novel tensor model to mine assistance and consensus among features, creating a comprehensive feature for more robust video fingerprinting.
Findings
Effective against combined video modifications
Improved fingerprinting accuracy over single-feature methods
Tensor decomposition enhances feature representation
Abstract
Content-based near-duplicate video detection (NDVD) is essential for effective search and retrieval, and robust video fingerprinting is a good solution for NDVD. Most existing video fingerprinting methods use a single feature or concatenating different features to generate video fingerprints, and show a good performance under single-mode modifications such as noise addition and blurring. However, when they suffer combined modifications, the performance is degraded to a certain extent because such features cannot characterize the video content completely. By contrast, the assistance and consensus among different features can improve the performance of video fingerprinting. Therefore, in the present study, we mine the assistance and consensus among different features based on tensor model, and present a new comprehensive feature to fully use them in the proposed video fingerprinting…
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Taxonomy
TopicsVideo Analysis and Summarization · Advanced Steganography and Watermarking Techniques · Advanced Image and Video Retrieval Techniques
