Linking people in videos with “ their ” names using coreference resolution ( Supplementary
نویسندگان
چکیده
1. Numb3rs 3x11 15. Highlander 5x14 2. Castle 1x03 16. Highlander 5x20 3. Highlander 5x02 17. Castle 1x09 4. Highlander 5x06 18. The Mentalist 1x19 5. The Mentalist 1x08 19. Californication 1x01 6. The Mentalist 1x22 7. The Mentalist 3x11 8. The Good Wife 1x10 9. The Good Wife 1x20 10. Twin Peaks 2x03 11. Desperate Housewives 1x04 12. 30 Rock 1x12 13. Sliders 4x02 14. Numb3rs 3x05 Table 1. The episodes used in our experiments are shown.
منابع مشابه
Linking People in Videos with "Their" Names Using Coreference Resolution
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