Title :
Improved detection of MP3 double compression using content-independent features
Author :
Mengyu Qiao ; Sung, Andrew H. ; Qingzhong Liu
Author_Institution :
Dept. of Math. & Comput. Sci., South Dakota Sch. of Mines & Technol., Rapid City, SD, USA
Abstract :
With the booming of smartphone and high-speed wireless networks in recent years, audio streaming and sharing become convenient and inexpensive, so that digital media is gradually replacing physical media. This trend has also led to more attacks to digital audio and its application. MP3 double compression, achieved by decompressing and recompressing audio to a different compression ratio, is a typical manipulation of audio for malicious purposes. In this paper, we propose an approach for detecting both up-transcoded and down-transcoded MP3 audio files and revealing the real compression quality based on statistical patterns extracted from quantized MDCT coefficients and their derivatives. To minimize the false prediction caused by individual characteristics of diversified audio clips, we generated reference audio signals by recompressing and calibrating the audio, and measured the differences between signal-based and reference-based features. Support vector machines and dynamic evolving neural-fuzzy inference systems were applied for binary and multi-class classifications. The experimental results show that our approach effectively detects MP3 double compression and exposes the audio processing history for digital forensics.
Keywords :
audio coding; audio streaming; data compression; discrete cosine transforms; fuzzy neural nets; fuzzy reasoning; support vector machines; transcoding; MP3 double-compression; audio decompression; audio recompression; audio sharing; audio streaming; binary classification; compression quality; compression ratio; content-independent features; digital audio; digital forensics; digital media; diversified audio clips; down-transcoded MP3 audio files; dynamic evolving neural-fuzzy inference systems; false prediction minimization; high-speed wireless networks; improved detection; multiclass classification; quantized MDCT coefficient; reference audio signals; reference-based features; signal-based features; smart phone; statistical patterns; support vector machines; up-transcoded MP3 audio files; Accuracy; Digital audio players; Encoding; Feature extraction; Media; Quantization (signal); Support vector machines; DENFIS; MP3; Pattern classification; SVM; audio; digital forgery; double compression;
Conference_Titel :
Signal Processing, Communication and Computing (ICSPCC), 2013 IEEE International Conference on
Conference_Location :
KunMing
DOI :
10.1109/ICSPCC.2013.6664121