Real-time detection of partial video copy on TV workstation

A system for the real-time copy detection of live TV videos is presented. A TV workstation supports the real-time and multichannel processing. Real-time NCC features are used for matching. A key-frame selection method ensures the robustness, the response and processing time optimization. Experiments are reported for time processing and accuracy on a public dataset against competitive methods.

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