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Late Temporal Modeling in 3D CNN Architectures with BERT for Action Recognition
Date
2020-08-28
Author
Kalfaoğlu, M Esat
Kalkan, Sinan
Alatan, Abdullah Aydın
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URI
https://dramaqa.snu.ac.kr/Workshop/2020
https://hdl.handle.net/11511/71824
Conference Name
ECCV Video Turing Test (VTT) Workshop (2020)
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Department of Engineering Sciences, Conference / Seminar
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M. E. Kalfaoğlu, S. Kalkan, and A. A. Alatan, “Late Temporal Modeling in 3D CNN Architectures with BERT for Action Recognition,” presented at the ECCV Video Turing Test (VTT) Workshop (2020), 2020, Accessed: 00, 2021. [Online]. Available: https://dramaqa.snu.ac.kr/Workshop/2020.