Robust pedestrian detection under deformation using simple boosted features

Image and Vision Computing - Tập 61 - Trang 1-11 - 2017
Hak-Kyoung Kim1, Daijin Kim2
1StradVision Korea, San 31, Hyoja-Dong, Nam-Gu, Pohang 790-784, Republic of Korea
2Department of CSE, POSTECH, San 31, Hyoja-Dong, Nam-Gu, Pohang 790-784, Republic of Korea

Tài liệu tham khảo

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