In this paper, we present a new approach for audio tampering detection based on microphone classification. The underlying algorithm is based on a blind channel estimation, specifically designed for recordings from mobile devices. It is applied to detect a specific type of tampering, i.e., to detect whether footprints from more than one microphone exist within a given content item. As will be shown, the proposed method achieves an accuracy above 95% for AAC, MP3 and PCM-encoded recordings
Abstract—An audio recording is subject to a number of possible distortions and artifacts. Consider, ...
Digital audio watermarking detection is often computational complex and requires at least as much au...
This work proposes a method for source device identification from speech recordings that applies neu...
In this paper we present an audio tampering detection method based on the combination of blind micro...
In this paper, we present a new algorithm for open-set microphone classification, which is based on ...
The authenticity verification of a User Generated Audio-Video content relative to a real event can b...
The transmission of audio data via the Internet of Things makes such data vulnerable to tampering. M...
We address the problem of detecting the presence of hidden messages in audio. The detector is based ...
In most practical applications, for the sake of information integrity not only it is useful to detec...
In this work many versions of CELP codecs are explored, and an observation is made that different co...
n the past few years, thanks to the increasing avail- ability of multimedia sharing platforms, the o...
Microphone handling noise is a common problem with user generated content. It can occur when the ope...
Microphone forensics has become a challenging field due to the proliferation of recording devices an...
Advanced Audio Coding (AAC), a standardized lossy compression scheme for digital audio, which was de...
In this paper we present an audio tampering detection method based on the analysis of discontinuitie...
Abstract—An audio recording is subject to a number of possible distortions and artifacts. Consider, ...
Digital audio watermarking detection is often computational complex and requires at least as much au...
This work proposes a method for source device identification from speech recordings that applies neu...
In this paper we present an audio tampering detection method based on the combination of blind micro...
In this paper, we present a new algorithm for open-set microphone classification, which is based on ...
The authenticity verification of a User Generated Audio-Video content relative to a real event can b...
The transmission of audio data via the Internet of Things makes such data vulnerable to tampering. M...
We address the problem of detecting the presence of hidden messages in audio. The detector is based ...
In most practical applications, for the sake of information integrity not only it is useful to detec...
In this work many versions of CELP codecs are explored, and an observation is made that different co...
n the past few years, thanks to the increasing avail- ability of multimedia sharing platforms, the o...
Microphone handling noise is a common problem with user generated content. It can occur when the ope...
Microphone forensics has become a challenging field due to the proliferation of recording devices an...
Advanced Audio Coding (AAC), a standardized lossy compression scheme for digital audio, which was de...
In this paper we present an audio tampering detection method based on the analysis of discontinuitie...
Abstract—An audio recording is subject to a number of possible distortions and artifacts. Consider, ...
Digital audio watermarking detection is often computational complex and requires at least as much au...
This work proposes a method for source device identification from speech recordings that applies neu...