A Novel Framework for Assessment of Learning-based Detectors in Realistic Conditions with Application to Deepfake Detection (2203.11797v1)
Abstract: Deep convolutional neural networks have shown remarkable results on multiple detection tasks. Despite the significant progress, the performance of such detectors are often assessed in public benchmarks under non-realistic conditions. Specifically, impact of conventional distortions and processing operations such as compression, noise, and enhancement are not sufficiently studied. This paper proposes a rigorous framework to assess performance of learning-based detectors in more realistic situations. An illustrative example is shown under deepfake detection context. Inspired by the assessment results, a data augmentation strategy based on natural image degradation process is designed, which significantly improves the generalization ability of two deepfake detectors.
- Yuhang Lu (31 papers)
- Ruizhi Luo (1 paper)
- Touradj Ebrahimi (22 papers)