The Multimedia Forensics community has developed a wide variety of tools for investigating the processing history of digital videos. One of the main problems, however, is the lack of benchmark datasets allowing to evaluate tools performance on a common reference. In fact, contrarily to the case of image forensics, only a few datasets exist for video forensics, that are limited in size and outdated when compared to today’s real-world scenario (e.g., they contain videos at very low resolution, captured with outdated camcorders, compressed with legacy encoders, etc.). In this paper, we propose a novel dataset made of 622 native videos, most of which in FullHD resolution, captured with 35 different portable devices, belonging to 11 manufacturers and running iOS, Android and Windows Phone OS. Videos have been captured in three different scenarios (indoor, outdoor, flat-field), and with three different kinds of motion (move, still, panrot). Since videos are increasingly shared through social media platforms, we also provide the YouTube version of most videos. Finally, in order to avoid that the proposed dataset becomes outdated in a few moths, we propose a mobile application (MOSES) that allows the acquisition of video contents from recent iOS and Android devices along with their metadata. In this way, the dataset can grow in the future and remain up-to-date.

A Dataset for Forensic Analysis of Videos in the Wild / Shullani, Dasara; AlShaya, Omar ; Iuliani, Massimo; Fontani, Marco; Piva, Alessandro. - ELETTRONICO. - 766:(2017), pp. 84-94. (Intervento presentato al convegno Proceeding of 2017 Tyrrhenian International Workshop on Digital Communications tenutosi a Palermo nel September 18-20, 2017) [10.1007/978-3-319-67639-5_8].

A Dataset for Forensic Analysis of Videos in the Wild

SHULLANI, DASARA;ALSHAYA, OMAR ABDULLAH H;IULIANI, MASSIMO;FONTANI, MARCO;PIVA, ALESSANDRO
2017

Abstract

The Multimedia Forensics community has developed a wide variety of tools for investigating the processing history of digital videos. One of the main problems, however, is the lack of benchmark datasets allowing to evaluate tools performance on a common reference. In fact, contrarily to the case of image forensics, only a few datasets exist for video forensics, that are limited in size and outdated when compared to today’s real-world scenario (e.g., they contain videos at very low resolution, captured with outdated camcorders, compressed with legacy encoders, etc.). In this paper, we propose a novel dataset made of 622 native videos, most of which in FullHD resolution, captured with 35 different portable devices, belonging to 11 manufacturers and running iOS, Android and Windows Phone OS. Videos have been captured in three different scenarios (indoor, outdoor, flat-field), and with three different kinds of motion (move, still, panrot). Since videos are increasingly shared through social media platforms, we also provide the YouTube version of most videos. Finally, in order to avoid that the proposed dataset becomes outdated in a few moths, we propose a mobile application (MOSES) that allows the acquisition of video contents from recent iOS and Android devices along with their metadata. In this way, the dataset can grow in the future and remain up-to-date.
2017
COMMUNICATIONS IN COMPUTER AND INFORMATION SCIENCE
Proceeding of 2017 Tyrrhenian International Workshop on Digital Communications
Palermo
September 18-20, 2017
Shullani, Dasara; AlShaya, Omar ; Iuliani, Massimo; Fontani, Marco; Piva, Alessandro
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1095335
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