forgery
DiffusionFake: Enhancing Generalization in Deepfake Detection via Guided Stable Diffusion
The rapid progress of Deepfake technology has made face swapping highly realistic, raising concerns about the malicious use of fabricated facial content. Existing methods often struggle to generalize to unseen domains due to the diverse nature of facial manipulations. In this paper, we revisit the generation process and identify a universal principle: Deepfake images inherently contain information from both source and target identities, while genuine faces maintain a consistent identity. Building upon this insight, we introduce DiffusionFake, a novel plug-and-play framework that reverses the generative process of face forgeries to enhance the generalization of detection models. DiffusionFake achieves this by injecting the features extracted by the detection model into a frozen pre-trained Stable Diffusion model, compelling it to reconstruct the corresponding target and source images. This guided reconstruction process constrains the detection network to capture the source and target related features to facilitate the reconstruction, thereby learning rich and disentangled representations that are more resilient to unseen forgeries. Extensive experiments demonstrate that DiffusionFake significantly improves cross-domain generalization of various detector architectures without introducing additional parameters during inference.
OST: Improving Generalization of DeepFake Detection via One-Shot Test-Time Training
State-of-the-art deepfake detectors perform well in identifying forgeries when they are evaluated on a test set similar to the training set, but struggle to maintain good performance when the test forgeries exhibit different characteristics from the training images e.g., forgeries are created by unseen deepfake methods. Such a weak generalization capability hinders the applicability of deepfake detectors. In this paper, we introduce a new learning paradigm specially designed for the generalizable deepfake detection task. Our key idea is to construct a test-sample-specific auxiliary task to update the model before applying it to the sample. Specifically, we synthesize pseudo-training samples from each test image and create a test-time training objective to update the model. Moreover, we proposed to leverage meta-learning to ensure that a fast single-step test-time gradient descent, dubbed one-shot test-time training (OST), can be sufficient for good deepfake detection performance. Extensive results across several benchmark datasets demonstrate that our approach performs favorably against existing arts in terms of generalization to unseen data and robustness to different post-processing steps.
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- Asia > China > Guangdong Province > Guangzhou (0.04)
- Europe > Netherlands > South Holland > Delft (0.04)
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- Africa > Central African Republic > Ombella-M'Poko > Bimbo (0.04)
Dual-Branch Convolutional Framework for Spatial and Frequency-Based Image Forgery Detection
With a very rapid increase in deepfakes and digital image forgeries, ensuring the authenticity of images is becoming increasingly challenging. This report introduces a forgery detection framework that combines spatial and frequency-based features for detecting forgeries. We propose a dual branch convolution neural network that operates on features extracted from spatial and frequency domains. Features from both branches are fused and compared within a Siamese network, yielding 64 dimensional embed-dings for classification. When benchmarked on CASIA 2.0 dataset, our method achieves an accuracy of 77.9%, outperforming traditional statistical methods. Despite its relatively weaker performance compared to larger, more complex forgery detection pipelines, our approach balances computational complexity and detection reliability, making it ready for practical deployment. It provides a strong methodology for forensic scrutiny of digital images.
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- Information Technology > Security & Privacy (1.00)
Startup uses AI to fight art forgeries--with hyper-realistic copies
Art knockoffs generate between $4 and $6 billion annually. Morrisseau's estate is working with Acrylic Robotics to combat art forgeries. Breakthroughs, discoveries, and DIY tips sent every weekday. A new weapon in the fight against fine art forgeries may, ironically enough, be a robot "painter" capable of composing nearly indistinguishable copies of renowned works. Canadian startup Acrylic Robotics is currently working with the estate of the late Canadian Indigenous artist Norval Morrisseau to create highly sophisticated replicas of his catalog using an AI-trained robotic painting system.
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- Asia > China > Guangdong Province > Zhuhai (0.04)
- Asia > China > Guangdong Province > Guangzhou (0.04)
- Europe > Netherlands > South Holland > Delft (0.04)
- Asia > Japan > Honshū > Chūbu > Nagano Prefecture > Nagano (0.04)
- Asia > China (0.04)
- Africa > Central African Republic > Ombella-M'Poko > Bimbo (0.04)
Video Forgery Detection for Surveillance Cameras: A Review
Tayfor, Noor B., Rashid, Tarik A., Qader, Shko M., Hassan, Bryar A., Abdalla, Mohammed H., Majidpour, Jafar, Ahmed, Aram M., Ali, Hussein M., Aladdin, Aso M., Abdullah, Abdulhady A., Shamsaldin, Ahmed S., Sidqi, Haval M., Salih, Abdulrahman, Yaseen, Zaher M., Ameen, Azad A., Nayak, Janmenjoy, Hamza, Mahmood Yashar
The widespread availability of video recording through smartphones and digital devices has made video-based evidence more accessible than ever. Surveillance footage plays a crucial role in security, law enforcement, and judicial processes. However, with the rise of advanced video editing tools, tampering with digital recordings has become increasingly easy, raising concerns about their authenticity. Ensuring the integrity of surveillance videos is essential, as manipulated footage can lead to misinformation and undermine judicial decisions. This paper provides a comprehensive review of existing forensic techniques used to detect video forgery, focusing on their effectiveness in verifying the authenticity of surveillance recordings. Various methods, including compression-based analysis, frame duplication detection, and machine learning-based approaches, are explored. The findings highlight the growing necessity for more robust forensic techniques to counteract evolving forgery methods. Strengthening video forensic capabilities will ensure that surveillance recordings remain credible and admissible as legal evidence.
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- Asia > Middle East > Iraq > Kurdistan Region > Sulaymaniyah Governorate > Sulaymaniyah (0.04)
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DiffusionFake: Enhancing Generalization in Deepfake Detection via Guided Stable Diffusion
The rapid progress of Deepfake technology has made face swapping highly realistic, raising concerns about the malicious use of fabricated facial content. Existing methods often struggle to generalize to unseen domains due to the diverse nature of facial manipulations. In this paper, we revisit the generation process and identify a universal principle: Deepfake images inherently contain information from both source and target identities, while genuine faces maintain a consistent identity. Building upon this insight, we introduce DiffusionFake, a novel plug-and-play framework that reverses the generative process of face forgeries to enhance the generalization of detection models. DiffusionFake achieves this by injecting the features extracted by the detection model into a frozen pre-trained Stable Diffusion model, compelling it to reconstruct the corresponding target and source images.