Journal on Communications ›› 2020, Vol. 41 ›› Issue (10): 70-79.doi: 10.11959/j.issn.1000-436x.2020181
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Yanfeng LI,Bin ZHANG,Jia SUN,Houjin CHEN(),Jinlei ZHU
Revised:
2020-08-05
Online:
2020-10-25
Published:
2020-11-05
Supported by:
CLC Number:
Yanfeng LI,Bin ZHANG,Jia SUN,Houjin CHEN,Jinlei ZHU. Cross-dataset person re-identification method based on multi-pool fusion and background elimination network[J]. Journal on Communications, 2020, 41(10): 70-79.
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数据集 | 网络 | Rank-1 | Rank-5 | Rank-10 | mAP |
ResNet50 | 82.40% | 93.15% | 95.50% | 60.76% | |
Market-1501 | G-L | 87.97% | 95.63% | 97.18% | 68.18% |
MPF | 91.90% | 97.01% | 98.25% | 76.35% | |
ResNet50 | 74.66% | 85.92% | 89.79% | 54.23% | |
DukeMTMC-reID | G-L | 78.90% | 88.78% | 91.52% | 61.10% |
MPF | 83.94% | 92.11% | 94.21% | 68.29% | |
ResNet50 | 60.85% | 74.85% | 80.68% | 30.67% | |
MSMT17 | G-L | 66.00% | 78.97% | 83.38% | 34.43% |
MPF | 72.07% | 83.07% | 86.50% | 40.70% |
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