Human activity recognition from UAV-captured video sequences

Pattern Recognition - Tập 100 - Trang 107140 - 2020
Hazar Mliki1, Fatma Bouhlel2, Mohamed Hammami3
1University of Sfax, MIRACL-ENETCOM, Sfax, Tunisia
2University of Sfax, MIRACL-FSEG, Sfax, Tunisia
3University of Sfax, MIRACL-FS, Sfax, Tunisia

Tài liệu tham khảo

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