社论:多媒体取证和视觉内容验证的最新趋势

IF 1.3 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
R. Caldelli, Duc Tien Dang Nguyen, Cecilia Pasquini
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引用次数: 0

摘要

事实上,每天都会产生大量的多媒体内容,遍布网络和社交网络等流行的分享平台。由于整个创建和共享周期,这些数据带有嵌入的痕迹,可以恢复和利用这些痕迹来评估特定资产的真实性。这包括识别媒体数据的来源、生成设备或制作方法,以及对多媒体信号的潜在操纵。此外,人工智能和现代表演设备的大量引入,以及内容共享和使用的新范式,决定了研究能够在全球范围内考虑所有这些重要变化的新方法的必要性。本研究课题汇集了媒体数据取证分析和验证的前沿技术,包括信号处理、机器/深度学习和多媒体分析的前沿解决方案。由于媒体创造和传播方面的技术进步,以及信号处理和学习方面的方法进步,多媒体取证的研究方法在过去几年中迅速发展。一个明显的方面是用于解决与视听数据相关任务的深度学习模型的破坏性扩散。由于它们在不同领域带来了令人印象深刻的性能提升,深度架构如今在多媒体取证研究中也占主导地位。然后,取证方法需要随着采集设备和数据格式的不断发展而更新。因此,算法的设计也以高效地分析高分辨率数据为目标,可能需要进行先进的相机内处理。此外,对于能够识别合成生成的视觉数据的检测技术的需求越来越大,以响应基于人工智能(AI)的生成模型(如生成对抗网络(gan))的令人印象深刻的进步。我们很高兴为本研究课题引入被接受的稿件,这些稿件与这些前沿研究趋势很好地结合在一起,并且是由高度认可的OPEN ACCESS撰写的
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Editorial: Recent trends in multimedia forensics and visual content verification
Huge amounts of multimedia content are in fact generated every day, pervading the web and popular sharing platforms such as social networks. Such data carry embedded traces due to the whole creation and sharing cycle, which can be recovered and exploited to assess the authenticity of a specific asset. This includes identifying the provenance of media data, the generation device or crafting method, as well as potential manipulation of the multimedia signal. Also, the massive introduction of artificial intelligence and of modern performing devices, together with new paradigms for content sharing and usage, have determined the need to research novel methodologies that can globally take into account all these important changes. This Research Topic gathers cutting-edge techniques for the forensic analysis and verification of media data, including solutions at the edge of signal processing, machine/ deep learning, and multimedia analysis. Research approaches to multimedia forensics have rapidly evolved in the last years, as a consequence of both technological advancements inmedia creation and distribution, andmethodological advancements in signal processing and learning. One evident aspect is the disruptive diffusion of deep learning models for addressing tasks related to audio-visual data. As a consequence of the impressive performance boost they brought in different areas, deep architectures nowadays dominate in multimedia forensics research as well. Then, forensic methodologies need to be updated with respect to the constant evolution of acquisition devices and data formats. Therefore, algorithms are also designed with the goal of efficiently analyzing high-resolution data, possibly subject to advanced in-camera processing. In addition, there is an increasing need for detection technologies that are able to identify synthetically generated visual data, in response to the impressive advancements of generative models based on Artificial intelligence (AI) such as Generative Adversarial Networks (GANs). We are glad to introduce the accepted manuscripts to this Research Topic, which are well aligned with these cutting-edge research trends and are authored by highly recognized OPEN ACCESS
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