AI RESEARCH
Efficient Logic Gate Networks for Video Copy Detection
arXiv CS.CV
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ArXi:2604.21694v1 Announce Type: new Video copy detection requires robust similarity estimation under diverse visual distortions while operating at very large scale. Although deep neural networks achieve strong performance, their computational cost and descriptor size limit practical deployment in high-throughput systems. In this work, we propose a video copy detection framework based on differentiable Logic Gate Networks (LGNs), which replace conventional floating-point feature extractors with compact, logic-based representations.