Laser Technology, Volume. 43, Issue 4, 476(2019)
Crowd counting algorithm based on multi-model deep convolution network integration
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LEI Hanlin, ZHANG Baohua. Crowd counting algorithm based on multi-model deep convolution network integration[J]. Laser Technology, 2019, 43(4): 476
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Received: Sep. 18, 2018
Accepted: --
Published Online: Jul. 10, 2019
The Author Email: ZHANG Baohua (zbh_wj2004@imust.cn)