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Além do Desempenho: Um Estudo da Confiabilidade de Detectores de Deepfakes

Published: January 13, 2026 | arXiv ID: 2601.08674v1

By: Lucas Lopes, Rayson Laroca, André Grégio

Deepfakes are synthetic media generated by artificial intelligence, with positive applications in education and creativity, but also serious negative impacts such as fraud, misinformation, and privacy violations. Although detection techniques have advanced, comprehensive evaluation methods that go beyond classification performance remain lacking. This paper proposes a reliability assessment framework based on four pillars: transferability, robustness, interpretability, and computational efficiency. An analysis of five state-of-the-art methods revealed significant progress as well as critical limitations.

Category
Computer Science:
CV and Pattern Recognition