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Model Zoo for Face Recognition
左庆 edited this page Nov 15, 2018
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测试集
ZQCNN-Face-12000_X_10-40 C++ crop
模型名称 | LFW精度(ZQCNN) | 耗时(ZQCNN) | 备注 |
---|---|---|---|
MobileFaceNet-v0 | 99.13%-99.23% | 单线程9-10ms, 四线程6-7ms,3.6GHz,MKL | 从model-y1.zip转的格式 |
MobileFaceNet-v1 | 99.17%-99.37% | 单线程9-10ms, 四线程6-7ms,3.6GHz,MKL | 我自己用insightface训练了一把 |
MobileFaceNet-GNAP | 99.38%-99.43% | 单线程9-10ms, 四线程6-7ms,3.6GHz,MKL | 感谢YaqiLYU训练此模型 |
ArcFace-r34 | 99.65%-99.70% | 单线程131ms,四线程53ms,3.6GHz,MKL | 这个模型是ms1m-refine-v1训练的 |
ArcFace-r34-v2 | 99.68%-99.78% | 单线程131ms,四线程53ms,3.6GHz,MKL | 这个模型是ms1m-refine-v2训练的 |
ArcFace-r50 | 99.75%-99.78% | 单线程175ms,四线程70ms, 3.6GHz, MKL | 这个模型是ms1m-refine-v1训练的 |
ArcFace-r100 | 99.80%-99.82% | 单线程327ms,四线程125ms, 3.6GHz, MKL | 这个模型是ms1m-refine-v2训练的 |
模型名称 | LFW精度(ZQCNN) | LFW精度(OpenCV3.4.2) | LFW精度(minicaffe) | 耗时 (ZQCNN) | 备注 |
---|---|---|---|---|---|
MobileFaceNet-res2-6-10-2-dim128 | 99.67%-99.55%(matlab crop), 99.72-99.60%(C++ crop) | 99.63%-99.65%(matlab crop), 99.68-99.70%(C++ crop) | 99.62%-99.65%(matlab crop), 99.68-99.60%(C++ crop) | 时间与dim256接近 | 网络结构与dim256一样,只不过输出维数不同 |
MobileFaceNet-res2-6-10-2-dim256 | 99.60%-99.60%(matlab crop), 99.62-99.62%(C++ crop) | 99.73%-99.68%(matlab crop), 99.78-99.68%(C++ crop) | 99.55%-99.63%(matlab crop), 99.60-99.62%(C++ crop) | 单线程约21-22ms,四线程约11-12ms, 3.6GHz,MKL | 网络结构在下载链接里,用faces_emore训练的 |
MobileFaceNet-res2-6-10-2-dim512 | 99.52%-99.60%(matlab crop), 99.63-99.72%(C++ crop) | 99.70%-99.67%(matlab crop), 99.77-99.77%(C++ crop) | 99.55%-99.62%(matlab crop), 99.62-99.68%(C++ crop) | 时间与dim256接近 | 网络结构与dim256一样,只不过输出维数不同。感谢moli训练此模型 |
模型名称 | LFW精度(ZQCNN) | LFW精度(OpenCV3.4.2) | LFW精度(minicaffe) | 耗时 (ZQCNN) | 备注 |
---|---|---|---|---|---|
MobileFaceNet-res4-8-16-4-dim128 | 99.72%-99.72%(matlab crop), 99.72-99.68%(C++ crop) | 99.82%-99.83%(matlab crop), 99.80-99.78%(C++ crop) | 99.72%-99.72%(matlab crop), 99.72-99.68%(C++ crop) | 时间与dim256接近 | 网络结构与dim256一样,只不过输出维数不同 |
MobileFaceNet-res4-8-16-4-dim256 | 99.78%-99.78%(matlab crop), 99.75-99.75%(C++ crop) | 99.82%-99.82%(matlab crop), 99.80-99.82%(C++ crop) | 99.78%-99.78%(matlab crop), 99.73-99.73%(C++ crop) | 单线程约32-33ms,四线程约16-19ms, 3.6GHz,MKL | 网络结构在下载链接里,用faces_emore训练的 |
MobileFaceNet-res4-8-16-4-dim512 | 99.80%-99.73%(matlab crop), 99.85-99.83%(C++ crop) | 99.83%-99.82%(matlab crop), 99.87-99.83%(C++ crop) | 99.80%-99.73%(matlab crop), 99.85-99.82%(C++ crop) | 时间与dim256接近 | 网络结构与dim256一样,只不过输出维数不同。感谢moli训练此模型 |
模型\测试集webface1000X50 | thresh@ FAR=1e-7 | TAR@ FAR=1e-7 | thresh@ FAR=1e-6 | TAR@ FAR=1e-6 | thresh@ FAR=1e-5 | TAR@ FAR=1e-5 |
---|---|---|---|---|---|---|
MobileFaceNet-res2-6-10-2-dim128 | 0.78785 | 9.274% | 0.66616 | 40.459% | 0.45855 | 92.716% |
MobileFaceNet-res2-6-10-2-dim256 | 0.77708 | 7.839% | 0.63872 | 40.934% | 0.43182 | 92.605% |
MobileFaceNet-res2-6-10-2-dim512 | 0.76699 | 8.197% | 0.63452 | 38.774% | 0.41572 | 93.000% |
MobileFaceNet-res4-8-16-4-dim128 | 0.79268 | 9.626% | 0.65770 | 48.252% | 0.45431 | 95.576% |
MobileFaceNet-res4-8-16-4-dim256 | 0.76858 | 9.220% | 0.62852 | 46.195% | 0.40010 | 96.929% |
MobileFaceNet-res4-8-16-4-dim512 | 0.76287 | 9.296% | 0.62555 | 44.775% | 0.39047 | 97.347% |
模型\测试集webface5000X20 | thresh@ FAR=1e-7 | TAR@ FAR=1e-7 | thresh@ FAR=1e-6 | TAR@ FAR=1e-6 | thresh@ FAR=1e-5 | TAR@ FAR=1e-5 |
---|---|---|---|---|---|---|
MobileFaceNet-res2-6-10-2-dim128 | 0.70933 | 29.558% | 0.51732 | 85.160% | 0.45108 | 94.313% |
MobileFaceNet-res2-6-10-2-dim256 | 0.68897 | 28.376% | 0.48820 | 85.278% | 0.42386 | 94.244% |
MobileFaceNet-res2-6-10-2-dim512 | 0.68126 | 27.708% | 0.47260 | 85.840% | 0.40727 | 94.632% |
MobileFaceNet-res4-8-16-4-dim128 | 0.71238 | 32.153% | 0.51391 | 89.525% | 0.44667 | 96.583% |
MobileFaceNet-res4-8-16-4-dim256 | 0.68490 | 30.639% | 0.46092 | 91.900% | 0.39198 | 97.696% |
MobileFaceNet-res4-8-16-4-dim512 | 0.67303 | 32.404% | 0.45216 | 92.453% | 0.38344 | 98.003% |
模型\测试集TAO ids:6606,ims:87210 | thresh@ FAR=1e-7 | TAR@ FAR=1e-7 | thresh@ FAR=1e-6 | TAR@ FAR=1e-6 | thresh@ FAR=1e-5 | TAR@ FAR=1e-5 |
---|---|---|---|---|---|---|
MobileFaceNet-res2-6-10-2-dim128 | 0.92204 | 01.282% | 0.88107 | 06.837% | 0.78302 | 41.740% |
MobileFaceNet-res2-6-10-2-dim256 | 0.91361 | 01.275% | 0.86750 | 07.081% | 0.76099 | 42.188% |
MobileFaceNet-res2-6-10-2-dim512 | 0.90657 | 01.448% | 0.86061 | 07.299% | 0.75488 | 41.956% |
MobileFaceNet-res4-8-16-4-dim128 | 0.92098 | 01.347% | 0.88233 | 06.795% | 0.78711 | 41.856% |
MobileFaceNet-res4-8-16-4-dim256 | 0.90862 | 01.376% | 0.86397 | 07.083% | 0.75975 | 42.430% |
MobileFaceNet-res4-8-16-4-dim512 | 0.90710 | 01.353% | 0.86190 | 06.948% | 0.75518 | 42.241% |