DeFakeQ: Enabling Real-Time Deepfake Detection on Edge Devices via Adaptive Bidirectional Quantization
Xiangyu Li, Yujing Sun, Yuhang Zheng, Yuexin Ma, Kwok-Yan Lam

TL;DR
DeFakeQ is a novel quantization framework designed to enable real-time deepfake detection on resource-limited edge devices by preserving subtle forgery cues through adaptive bidirectional compression.
Contribution
It introduces the first quantization method tailored for deepfake detectors, balancing model size and detection accuracy for edge deployment.
Findings
DeFakeQ outperforms existing quantization methods across five benchmark datasets.
It maintains high detection accuracy with significantly reduced model size.
Successfully deployed on mobile devices for real-time deepfake detection.
Abstract
Deepfake detection has become a fundamental component of modern media forensics. Despite significant progress in detection accuracy, most existing methods remain computationally intensive and parameter-heavy, limiting their deployment on resource-constrained edge devices that require real-time, on-site inference. This limitation is particularly critical in an era where mobile devices are extensively used for media-centric applications, including online payments, virtual meetings, and social networking. Meanwhile, due to the unique requirement of capturing extremely subtle forgery artifacts for deepfake detection, state-of-the-art quantization techniques usually underperform for such a challenging task. These fine-grained cues are highly sensitive to model compression and can be easily degraded during quantization, leading to noticeable performance drops. This challenge highlights the…
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