Abstract

Double compression detection is of great significance to recover the compression history of suspicious videos and help analyzers locate tampering points in forged videos. However, the lack of efficient methods still haunts researchers when it comes to double HEVC compression detection with a shifted group of pictures (GOP) structures. To tackle this problem, we first analyze the properties of re-encoded frames in double compressed HEVC videos. It is found that the abnormal statistics of prediction unit (PU) types in relocated I-frames can be used as the clue to expose double compression. Relocated I-frames are re-encoded P-frames, which were I-frames in the first compression. Different from the existing works, we designed the GOP-based features instead of frame-based features, enabling more efficient utilization of temporal variation patterns of PU-type statistics within each GOP unit. In the proposed method, the ratio of I-PUs and S-Pus is first computed to construct PU sequences for each GOP unit. The three-tap median filter is applied to PU sequences in order to mitigate the influence of various video contents. Several first-order statistics, including average, variation, and maximum/minimum, are selected to generate a 6-D detection feature. Then, multi-layer perceptron (MLP) is used to classify GOP-based features. Finally, the score fusion strategy is applied to obtain the detection result of the input video. Several publicly available YUV sequences are used to construct the double compression dataset with various coding parameters. In experiments, the proposed method outperforms several state-of-the-art methods under different settings of bitrates and GOP structures. The proposed method has more robust detection capability even when tampered videos are generated by combining two video clips with different GOP sizes.

Highlights

  • With the development of video transmission techniques and video sharing websites, digital video has become one of the most widely-used ways to deliver information over the Internet

  • We focus on detection of double compression with shifted group of pictures (GOP) structures, since temporal tampering operations, such as frame deletion and frame insertion [30], [31], VOLUME 7, 2019 can leave this kind of double compression traces in most cases

  • EXTRACTION OF DETECTION FEATURES USING GOP-BASED prediction unit (PU) TYPE STATISTICS According to the analysis provided in Section II-C, the temporal variation patterns of PU types are distinguishable between GOP units with and without relocated I-frames, which can be regarded as clues to identify double compressed videos

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Summary

INTRODUCTION

With the development of video transmission techniques and video sharing websites, digital video has become one of the most widely-used ways to deliver information over the Internet. For the most advanced video compression standard, namely HEVC [16], the statistics of several coding data, such as DCT coefficient, PU type and TU (Transform Unit) partition types, are used to construct detection features and combined with the machine-learning based classifier to get detection results [17]–[20]. Temporal correlation between adjacent frames in the same GOP unit cannot be leveraged To overcome these limitations, we first theoretically analyze the statistics of PU type in single and double compressed videos. It is found that the temporal variation patterns of PU type have distinguishable properties within GOP units, which inspired us to design detection features from each GOP unit instead of individual frames or the entire video sequence like previous works. The statistics of PUs are applied to expose the traces of double compressed HEVC videos

DOUBLE HEVC COMPRESSION OPERATION
DATA PREPROCESSING
SCORE FUSION BASED ON ‘‘AVERAGE RULE’’
CRITERIA
COMPARISON WITH STATE-OF-THE-ART METHODS
ANALYZING THE IMPACT OF DIFFERENT FEATURE SUBSETS AND CLASSIFIERS
Findings
CONCLUSION
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