A study on audio synchronous steganography detection and distributed guide inference model based on sliding spectral features and intelligent inference drive
Wei Meng

TL;DR
This paper introduces a novel detection and inference framework for audio synchronization steganography using sliding spectral features, enhancing covert communication analysis in short videos.
Contribution
It presents a new detection model based on sliding spectrum features and an inference model for distributed guidance, addressing limitations of traditional methods.
Findings
Effective detection of synchronized steganography frames.
Successful decoding of embedded guidance commands.
Demonstrated cross-video embedding and centralized decoding capabilities.
Abstract
With the rise of short video platforms in global communication, embedding steganographic data in audio synchronization streams has emerged as a new covert communication method. To address the limitations of traditional techniques in detecting synchronized steganography, this paper proposes a detection and distributed guidance reconstruction model based on short video "Yupan" samples released by China's South Sea Fleet on TikTok. The method integrates sliding spectrum feature extraction and intelligent inference mechanisms. A 25 ms sliding window with short-time Fourier transform (STFT) is used to extract the main frequency trajectory and construct the synchronization frame detection model (M1), identifying a frame flag "FFFFFFFFFFFFFFFFFF80". The subsequent 32-byte payload is decoded by a structured model (M2) to infer distributed guidance commands. Analysis reveals a low-entropy,…
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Taxonomy
TopicsAdvanced Steganography and Watermarking Techniques · Image Processing and 3D Reconstruction · Digital Media Forensic Detection
