AT-ADD:全类型音频深度伪造检测挑战赛评估方案 / AT-ADD: All-Type Audio Deepfake Detection Challenge Evaluation Plan
1️⃣ 一句话总结
这篇论文提出了一个名为AT-ADD的挑战赛,旨在推动音频深度伪造检测技术从仅针对语音扩展到所有类型的音频,并提升其在真实复杂场景下的鲁棒性和通用性,以应对合成音频技术快速发展带来的安全和信任挑战。
The rapid advancement of Audio Large Language Models (ALLMs) has enabled cost-effective, high-fidelity generation and manipulation of both speech and non-speech audio, including sound effects, singing voices, and music. While these capabilities foster creativity and content production, they also introduce significant security and trust challenges, as realistic audio deepfakes can now be generated and disseminated at scale. Existing audio deepfake detection (ADD) countermeasures (CMs) and benchmarks, however, remain largely speech-centric, often relying on speech-specific artifacts and exhibiting limited robustness to real-world distortions, as well as restricted generalization to heterogeneous audio types and emerging spoofing techniques. To address these gaps, we propose the All-Type Audio Deepfake Detection (AT-ADD) Grand Challenge for ACM Multimedia 2026, designed to bridge controlled academic evaluation with practical multimedia forensics. AT-ADD comprises two tracks: (1) Robust Speech Deepfake Detection, which evaluates detectors under real-world scenarios and against unseen, state-of-the-art speech generation methods; and (2) All-Type Audio Deepfake Detection, which extends detection beyond speech to diverse, unknown audio types and promotes type-agnostic generalization across speech, sound, singing, and music. By providing standardized datasets, rigorous evaluation protocols, and reproducible baselines, AT-ADD aims to accelerate the development of robust and generalizable audio forensic technologies, supporting secure communication, reliable media verification, and responsible governance in an era of pervasive synthetic audio.
AT-ADD:全类型音频深度伪造检测挑战赛评估方案 / AT-ADD: All-Type Audio Deepfake Detection Challenge Evaluation Plan
这篇论文提出了一个名为AT-ADD的挑战赛,旨在推动音频深度伪造检测技术从仅针对语音扩展到所有类型的音频,并提升其在真实复杂场景下的鲁棒性和通用性,以应对合成音频技术快速发展带来的安全和信任挑战。
源自 arXiv: 2604.08184