model_zoo.md 25.7 KB
Newer Older
W
whs 已提交
1 2
# 模型库

B
Bai Yifan 已提交
3 4 5 6 7 8
## 1. 图象分类

数据集:ImageNet1000类

### 1.1 量化

9 10 11 12 13 14 15 16 17 18
| 模型 | 压缩方法 | Top-1/Top-5 Acc | 模型体积(MB) | TensorRT时延(V100, ms) | 下载 |
|:--:|:---:|:--:|:--:|:--:|:--:|
|MobileNetV1|-|70.99%/89.68%| 17 | -| [下载链接](http://paddle-imagenet-models-name.bj.bcebos.com/MobileNetV1_pretrained.tar) |
|MobileNetV1|quant_post|70.18%/89.25% (-0.81%/-0.43%)| 4.4 | - | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/MobileNetV1_quant_post.tar) |
|MobileNetV1|quant_aware|70.60%/89.57% (-0.39%/-0.11%)| 4.4 | -| [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/MobileNetV1_quant_aware.tar) |
| MobileNetV2 | - |72.15%/90.65%| 15 | - | [下载链接](https://paddle-imagenet-models-name.bj.bcebos.com/MobileNetV2_pretrained.tar) |
| MobileNetV2 | quant_post | 71.15%/90.11% (-1%/-0.54%)| 4.0   | - | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/MobileNetV2_quant_post.tar) |
| MobileNetV2 | quant_aware |72.05%/90.63% (-0.1%/-0.02%)| 4.0 | - | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/MobileNetV2_quant_aware.tar) |
|ResNet50|-|76.50%/93.00%| 99 | 2.71 | [下载链接](http://paddle-imagenet-models-name.bj.bcebos.com/ResNet50_pretrained.tar) |
|ResNet50|quant_post|76.33%/93.02% (-0.17%/+0.02%)| 25.1| 1.19 | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/ResNet50_quant_post.tar) |
C
ceci3 已提交
19
|ResNet50|quant_aware|    76.48%/93.11% (-0.02%/+0.11%)| 25.1 | 1.17 | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/ResNet50_quant_awre.tar) |
20

B
Bai Yifan 已提交
21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53
分类模型Lite时延(ms)

| 设备    | 模型类型    | 压缩策略      | armv7 Thread 1 | armv7 Thread 2 | armv7 Thread 4 | armv8 Thread 1 | armv8 Thread 2 | armv8 Thread 4 |
| ------- | ----------- | ------------- | -------------- | -------------- | -------------- | -------------- | -------------- | -------------- |
| 高通835 | MobileNetV1 | FP32 baseline | 96.1942        | 53.2058        | 32.4468        | 88.4955        | 47.95          | 27.5189        |
| 高通835 | MobileNetV1 | quant_aware   | 60.8186        | 32.1931        | 16.4275        | 56.4311        | 29.5446        | 15.1053        |
| 高通835 | MobileNetV1 | quant_post    | 60.5615        | 32.4016        | 16.6596        | 56.5266        | 29.7178        | 15.1459        |
| 高通835 | MobileNetV2 | FP32 baseline | 65.715         | 38.1346        | 25.155         | 61.3593        | 36.2038        | 22.849         |
| 高通835 | MobileNetV2 | quant_aware   | 48.3655        | 30.2021        | 21.9303        | 46.1487        | 27.3146        | 18.3053        |
| 高通835 | MobileNetV2 | quant_post    | 48.3495        | 30.3069        | 22.1506        | 45.8715        | 27.4105        | 18.2223        |
| 高通835 | ResNet50    | FP32 baseline | 526.811        | 319.6486       | 205.8345       | 506.1138       | 335.1584       | 214.8936       |
| 高通835 | ResNet50    | quant_aware   | 475.4538       | 256.8672       | 139.699        | 461.7344       | 247.9506       | 145.9847       |
| 高通835 | ResNet50    | quant_post    | 476.0507       | 256.5963       | 139.7266       | 461.9176       | 248.3795       | 149.353        |
| 高通855 | MobileNetV1 | FP32 baseline | 33.5086        | 19.5773        | 11.7534        | 31.3474        | 18.5382        | 10.0811        |
| 高通855 | MobileNetV1 | quant_aware   | 36.7067        | 21.628         | 11.0372        | 14.0238        | 8.199          | 4.2588         |
| 高通855 | MobileNetV1 | quant_post    | 37.0498        | 21.7081        | 11.0779        | 14.0947        | 8.1926         | 4.2934         |
| 高通855 | MobileNetV2 | FP32 baseline | 25.0396        | 15.2862        | 9.6609         | 22.909         | 14.1797        | 8.8325         |
| 高通855 | MobileNetV2 | quant_aware   | 28.1583        | 18.3317        | 11.8103        | 16.9158        | 11.1606        | 7.4148         |
| 高通855 | MobileNetV2 | quant_post    | 28.1631        | 18.3917        | 11.8333        | 16.9399        | 11.1772        | 7.4176         |
| 高通855 | ResNet50    | FP32 baseline | 185.3705       | 113.0825       | 87.0741        | 177.7367       | 110.0433       | 74.4114        |
| 高通855 | ResNet50    | quant_aware   | 327.6883       | 202.4536       | 106.243        | 243.5621       | 150.0542       | 78.4205        |
| 高通855 | ResNet50    | quant_post    | 328.2683       | 201.9937       | 106.744        | 242.6397       | 150.0338       | 79.8659        |
| 麒麟970 | MobileNetV1 | FP32 baseline | 101.2455       | 56.4053        | 35.6484        | 94.8985        | 51.7251        | 31.9511        |
| 麒麟970 | MobileNetV1 | quant_aware   | 62.5012        | 32.1863        | 16.6018        | 57.7477        | 29.2116        | 15.0703        |
| 麒麟970 | MobileNetV1 | quant_post    | 62.4412        | 32.2585        | 16.6215        | 57.825         | 29.2573        | 15.1206        |
| 麒麟970 | MobileNetV2 | FP32 baseline | 70.4176        | 42.0795        | 25.1939        | 68.9597        | 39.2145        | 22.6617        |
| 麒麟970 | MobileNetV2 | quant_aware   | 52.9961        | 31.5323        | 22.1447        | 49.4858        | 28.0856        | 18.7287        |
| 麒麟970 | MobileNetV2 | quant_post    | 53.0961        | 31.7987        | 21.8334        | 49.383         | 28.2358        | 18.3642        |
| 麒麟970 | ResNet50    | FP32 baseline | 586.8943       | 344.0858       | 228.2293       | 573.3344       | 351.4332       | 225.8006       |
| 麒麟970 | ResNet50    | quant_aware   | 488.361        | 260.1697       | 142.416        | 479.5668       | 249.8485       | 138.1742       |
| 麒麟970 | ResNet50    | quant_post    | 489.6188       | 258.3279       | 142.6063       | 480.0064       | 249.5339       | 138.5284       |


B
Bai Yifan 已提交
54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91



### 1.2 剪裁


| 模型 | 压缩方法 | Top-1/Top-5 Acc | 模型体积(MB) | GFLOPs | 下载 |
|:--:|:---:|:--:|:--:|:--:|:--:|
| MobileNetV1 |    Baseline    |         70.99%/89.68%         |       17       |  1.11  | [下载链接](http://paddle-imagenet-models-name.bj.bcebos.com/MobileNetV1_pretrained.tar) |
| MobileNetV1 |  uniform -50%  | 69.4%/88.66% (-1.59%/-1.02%)  |       9        |  0.56  | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/MobileNetV1_uniform-50.tar) |
| MobileNetV1 | sensitive -30% |  70.4%/89.3% (-0.59%/-0.38%)  |       12       |  0.74  | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/MobileNetV1_sensitive-30.tar) |
| MobileNetV1 | sensitive -50% | 69.8% / 88.9% (-1.19%/-0.78%) |       9        |  0.56  | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/MobileNetV1_sensitive-50.tar) |
| MobileNetV2 |       -        |         72.15%/90.65%         |       15       |  0.59  | [下载链接](https://paddle-imagenet-models-name.bj.bcebos.com/MobileNetV2_pretrained.tar) |
| MobileNetV2 |  uniform -50%  | 65.79%/86.11% (-6.35%/-4.47%) |       11       | 0.296  | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/MobileNetV2_uniform-50.tar) |
|  ResNet34   |       -        |         72.15%/90.65%         |       84       |  7.36  | [下载链接](https://paddle-imagenet-models-name.bj.bcebos.com/ResNet34_pretrained.tar) |
|  ResNet34   |  uniform -50%  | 70.99%/89.95% (-1.36%/-0.87%) |       41       |  3.67  | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/ResNet34_uniform-50.tar) |
|  ResNet34   |  auto -55.05%  | 70.24%/89.63% (-2.04%/-1.06%) |       33       |  3.31  | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/ResNet34_auto-55.tar) |




### 1.3 蒸馏

| 模型 | 压缩方法 | Top-1/Top-5 Acc | 模型体积(MB) | 下载 |
|:--:|:---:|:--:|:--:|:--:|
| MobileNetV1 |                     student                     |  70.99%/89.68%  |       17       | [下载链接](http://paddle-imagenet-models-name.bj.bcebos.com/MobileNetV1_pretrained.tar) |
|ResNet50_vd|teacher|79.12%/94.44%| 99 | [下载链接](https://paddle-imagenet-models-name.bj.bcebos.com/ResNet50_vd_pretrained.tar) |
|MobileNetV1|ResNet50_vd<sup>[1](#trans1)</sup> distill|72.77%/90.68% (+1.78%/+1.00%)| 17 | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/MobileNetV1_distilled.tar) |
| MobileNetV2 |                     student                     |  72.15%/90.65%  |       15       | [下载链接](https://paddle-imagenet-models-name.bj.bcebos.com/MobileNetV2_pretrained.tar) |
| MobileNetV2 |            ResNet50_vd distill             |  74.28%/91.53% (+2.13%/+0.88%)  |       15       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/MobileNetV2_distilled.tar) |
|  ResNet50   |                     student                     |  76.50%/93.00%  |       99       | [下载链接](http://paddle-imagenet-models-name.bj.bcebos.com/ResNet50_pretrained.tar) |
|ResNet101|teacher|77.56%/93.64%| 173 | [下载链接](http://paddle-imagenet-models-name.bj.bcebos.com/ResNet101_pretrained.tar) |
|  ResNet50   |             ResNet101 distill              |  77.29%/93.65% (+0.79%/+0.65%)  |       99       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/ResNet50_distilled.tar) |

!!! note "Note"

    <a name="trans1">[1]</a>:带_vd后缀代表该预训练模型使用了Mixup,Mixup相关介绍参考[mixup: Beyond Empirical Risk Minimization](https://arxiv.org/abs/1710.09412)

C
ceci3 已提交
92 93 94 95 96 97
### 1.4 搜索

| 模型 | 压缩方法 | Top-1/Top-5 Acc | 模型体积(MB) | GFLOPs | 下载 |
|:--:|:---:|:--:|:--:|:--:|:--:|
| MobileNetV2 |       -        |            72.15%/90.65%           |     15      |  0.59  | [下载链接](https://paddle-imagenet-models-name.bj.bcebos.com/MobileNetV2_pretrained.tar) |
| MobileNetV2 |     SANAS      |  71.518%/90.208% (-0.632%/-0.442%) |     14      | 0.295  | [下载链接](https://paddlemodels.cdn.bcebos.com/PaddleSlim/MobileNetV2_sanas.tar) |
B
Bai Yifan 已提交
98 99 100 101 102 103 104

## 2. 目标检测

### 2.1 量化

数据集: COCO 2017

105 106 107
|              模型              |  压缩方法   | 数据集 | Image/GPU | 输入608 Box AP | 输入416 Box AP | 输入320 Box AP | 模型体积(MB) |   TensorRT时延(V100, ms) |  下载     |
| :----------------------------: | :---------: | :----: | :-------: | :------------: | :------------: | :------------: | :------------: | :----------: |:----------: |
|      MobileNet-V1-YOLOv3       |      -      |  COCO  |     8     |      29.3      |      29.3      |      27.1      |       95       |  - | [下载链接](https://paddlemodels.bj.bcebos.com/object_detection/yolov3_mobilenet_v1.tar) |
C
ceci3 已提交
108 109
|      MobileNet-V1-YOLOv3       | quant_post  |  COCO  |     8     |     27.9 (-1.4)|    28.0 (-1.3)      |    26.0 (-1.0) |       25       | -  | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/yolov3_mobilenetv1_coco_quant_post.tar) |
|      MobileNet-V1-YOLOv3       | quant_aware |  COCO  |     8     |     28.1 (-1.2)|  28.2 (-1.1)      |    25.8 (-1.2) |       26.3     | -  | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/yolov3_mobilenet_coco_quant_aware.tar) |
110 111 112 113 114
|      R34-YOLOv3                |      -      |  COCO  |     8     |      36.2      |      34.3      |      31.4      |       162       |  - | [下载链接](https://paddlemodels.bj.bcebos.com/object_detection/yolov3_r34.tar) |
|      R34-YOLOv3                | quant_post  |  COCO  |     8     | 35.7 (-0.5)    |      -         |      -         |       42.7      |  - | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/yolov3_r34_coco_quant_post.tar) |
|      R34-YOLOv3                | quant_aware |  COCO  |     8     |  35.2 (-1.0)   | 33.3 (-1.0)    |     30.3 (-1.1)|       44       |  - | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/yolov3_r34_coco_quant_aware.tar) |
| R50-dcn-YOLOv3 obj365_pretrain |      -      |  COCO  |     8     |      41.4      |       -      |       -       |       177       | 18.56  |[下载链接](https://paddlemodels.bj.bcebos.com/object_detection/yolov3_r50vd_dcn_obj365_pretrained_coco.tar) |
| R50-dcn-YOLOv3 obj365_pretrain | quant_aware |  COCO  |     8     |   40.6 (-0.8)  |       37.5   |       34.1    |       66       |  14.64 | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/yolov3_r50vd_dcn_obj365_pretrained_coco_quant_aware.tar) |
B
Bai Yifan 已提交
115 116 117 118 119 120 121



数据集:WIDER-FACE



122 123 124 125 126 127 128 129 130 131 132
|      模型      |  压缩方法   | Image/GPU | 输入尺寸 |        Easy/Medium/Hard         | 模型体积(MB) |                             下载                             |
| :------------: | :---------: | :-------: | :------: | :-----------------------------: | :------------: | :----------------------------------------------------------: |
|   BlazeFace    |      -      |     8     |   640    |         91.5/89.2/79.7          |      815       | [下载链接](https://paddlemodels.bj.bcebos.com/object_detection/blazeface_original.tar) |
|   BlazeFace    | quant_post  |     8     |   640    | 87.8/85.1/74.9 (-3.7/-4.1/-4.8) |      228       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/blazeface_origin_quant_post.tar) |
|   BlazeFace    | quant_aware |     8     |   640    | 90.5/87.9/77.6 (-1.0/-1.3/-2.1) |      228       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/blazeface_origin_quant_aware.tar) |
| BlazeFace-Lite |      -      |     8     |   640    |         90.9/88.5/78.1          |      711       | [下载链接](https://paddlemodels.bj.bcebos.com/object_detection/blazeface_lite.tar) |
| BlazeFace-Lite | quant_post  |     8     |   640    | 89.4/86.7/75.7 (-1.5/-1.8/-2.4) |      211       | [下载链接]((https://paddlemodels.bj.bcebos.com/PaddleSlim/blazeface_lite_quant_post.tar)) |
| BlazeFace-Lite | quant_aware |     8     |   640    | 89.7/87.3/77.0 (-1.2/-1.2/-1.1) |      211       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/blazeface_lite_quant_aware.tar) |
| BlazeFace-NAS  |      -      |     8     |   640    |         83.7/80.7/65.8          |      244       | [下载链接](https://paddlemodels.bj.bcebos.com/object_detection/blazeface_nas.tar) |
| BlazeFace-NAS  | quant_post  |     8     |   640    | 81.6/78.3/63.6 (-2.1/-2.4/-2.2) |       71       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/blazeface_nas_quant_post.tar) |
| BlazeFace-NAS  | quant_aware |     8     |   640    | 83.1/79.7/64.2 (-0.6/-1.0/-1.6) |       71       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/blazeface_nas_quant_aware.tar) |
B
Bai Yifan 已提交
133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165

### 2.2 剪裁

数据集:Pasacl VOC & COCO 2017

|              模型              |     压缩方法      |   数据集   | Image/GPU | 输入608 Box AP | 输入416 Box AP | 输入320 Box AP | 模型体积(MB) | GFLOPs (608*608) |                             下载                             |
| :----------------------------: | :---------------: | :--------: | :-------: | :------------: | :------------: | :------------: | :----------: | :--------------: | :----------------------------------------------------------: |
|      MobileNet-V1-YOLOv3       |     Baseline      | Pascal VOC |     8     |      76.2      |      76.7      |      75.3      |      94      |      40.49       | [下载链接](https://paddlemodels.bj.bcebos.com/object_detection/yolov3_mobilenet_v1_voc.tar) |
|      MobileNet-V1-YOLOv3       | sensitive -52.88% | Pascal VOC |     8     |  77.6 (+1.4)   |   77.7 (1.0)   |  75.5 (+0.2)   |      31      |      19.08       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/yolov3_mobilenet_v1_voc_prune.tar) |
|      MobileNet-V1-YOLOv3       |         -         |    COCO    |     8     |      29.3      |      29.3      |      27.0      |      95      |      41.35       | [下载链接](https://paddlemodels.bj.bcebos.com/object_detection/yolov3_mobilenet_v1.tar) |
|      MobileNet-V1-YOLOv3       | sensitive -51.77% |    COCO    |     8     |  26.0 (-3.3)   |  25.1 (-4.2)   |  22.6 (-4.4)   |      32      |      19.94       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/yolov3_mobilenet_v1_prune.tar) |
|         R50-dcn-YOLOv3         |         -         |    COCO    |     8     |      39.1      |       -        |       -        |     177      |      89.60       | [下载链接](https://paddlemodels.bj.bcebos.com/object_detection/yolov3_r50vd_dcn.tar) |
|         R50-dcn-YOLOv3         | sensitive -9.37%  |    COCO    |     8     |  39.3 (+0.2)   |       -        |       -        |     150      |      81.20       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/yolov3_r50vd_dcn_prune.tar) |
|         R50-dcn-YOLOv3         | sensitive -24.68% |    COCO    |     8     |  37.3 (-1.8)   |       -        |       -        |     113      |      67.48       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/yolov3_r50vd_dcn_prune578.tar) |
| R50-dcn-YOLOv3 obj365_pretrain |         -         |    COCO    |     8     |      41.4      |       -        |       -        |     177      |      89.60       | [下载链接](https://paddlemodels.bj.bcebos.com/object_detection/yolov3_r50vd_dcn_obj365_pretrained_coco.tar) |
| R50-dcn-YOLOv3 obj365_pretrain | sensitive -9.37%  |    COCO    |     8     |  40.5 (-0.9)   |       -        |       -        |     150      |      81.20       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/yolov3_r50vd_dcn_obj365_pretrained_coco_prune.tar) |
| R50-dcn-YOLOv3 obj365_pretrain | sensitive -24.68% |    COCO    |     8     |  37.8 (-3.3)   |       -        |       -        |     113      |      67.48       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/yolov3_r50vd_dcn_obj365_pretrained_coco_prune578.tar) |

### 2.3 蒸馏

数据集:Pasacl VOC & COCO 2017


|        模型         |        压缩方法         |   数据集   | Image/GPU | 输入608 Box AP | 输入416 Box AP | 输入320 Box AP | 模型体积(MB) |                             下载                             |
| :-----------------: | :---------------------: | :--------: | :-------: | :------------: | :------------: | :------------: | :------------: | :----------------------------------------------------------: |
| MobileNet-V1-YOLOv3 |            -            | Pascal VOC |     8     |      76.2      |      76.7      |      75.3      |       94       | [下载链接](https://paddlemodels.bj.bcebos.com/object_detection/yolov3_mobilenet_v1_voc.tar) |
|   ResNet34-YOLOv3   |            -            | Pascal VOC |     8     |      82.6      |      81.9      |      80.1      |      162       | [下载链接](https://paddlemodels.bj.bcebos.com/object_detection/yolov3_r34_voc.tar) |
| MobileNet-V1-YOLOv3 | ResNet34-YOLOv3 distill | Pascal VOC |     8     |  79.0 (+2.8)   |  78.2 (+1.5)   |  75.5 (+0.2)   |       94       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/yolov3_mobilenetv1_voc_distilled.tar) |
| MobileNet-V1-YOLOv3 |            -            |    COCO    |     8     |      29.3      |      29.3      |      27.0      |       95       | [下载链接](https://paddlemodels.bj.bcebos.com/object_detection/yolov3_mobilenet_v1.tar) |
|   ResNet34-YOLOv3   |            -            |    COCO    |     8     |      36.2      |      34.3      |      31.4      |      163       | [下载链接](https://paddlemodels.bj.bcebos.com/object_detection/yolov3_r34.tar) |
| MobileNet-V1-YOLOv3 | ResNet34-YOLOv3 distill |    COCO    |     8     |  31.4 (+2.1)   |  30.0 (+0.7)   |  27.1 (+0.1)   |       95       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/yolov3_mobilenetv1_coco_distilled.tar) |


C
ceci3 已提交
166 167 168 169 170 171 172 173 174 175 176 177 178 179
### 2.4 搜索

数据集:WIDER-FACE

|      模型      |  压缩方法   | Image/GPU | 输入尺寸 |        Easy/Medium/Hard         | 模型体积(KB) |    硬件延时(ms)|                         下载                             |
| :------------: | :---------: | :-------: | :------: | :-----------------------------: | :------------: | :------------: | :----------------------------------------------------------: |
|   BlazeFace    |      -      |     8     |   640    |         91.5/89.2/79.7          |      815       |       71.862     | [下载链接](https://paddlemodels.bj.bcebos.com/object_detection/blazeface_original.tar) |
| BlazeFace-NAS  |      -      |     8     |   640    |         83.7/80.7/65.8          |      244       |       21.117     |[下载链接](https://paddlemodels.bj.bcebos.com/object_detection/blazeface_nas.tar) |
| BlazeFace-NAS1 |    SANAS    |     8     |   640    |         87.0/83.7/68.5          |      389       |       22.558     | [下载链接](https://paddlemodels.bj.bcebos.com/object_detection/blazeface_nas2.tar) |

!!! note "Note"

    <a name="trans1">[1]</a>: 硬件延时时间是利用提供的硬件延时表得到的,硬件延时表是在855芯片上基于PaddleLite测试的结果。

B
Bai Yifan 已提交
180 181 182 183 184 185
## 3. 图像分割

数据集:Cityscapes

### 3.1 量化

186 187 188 189 190 191 192 193 194
|          模型          |  压缩方法   |     mIoU      | 模型体积(MB) |                             下载                             |
| :--------------------: | :---------: | :-----------: | :------------: | :----------------------------------------------------------: |
| DeepLabv3+/MobileNetv1 |      -      |     63.26     |      6.6       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/deeplabv3_mobilenetv1.tar )                         |
| DeepLabv3+/MobileNetv1 | quant_post  | 58.63 (-4.63) |      1.8       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/deeplabv3_mobilenetv1_2049x1025_quant_post.tar) |
| DeepLabv3+/MobileNetv1 | quant_aware | 62.03 (-1.23) |      1.8       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/deeplabv3_mobilenetv1_2049x1025_quant_aware.tar) |
| DeepLabv3+/MobileNetv2 |      -      |     69.81     |      7.4       | [下载链接](https://paddleseg.bj.bcebos.com/models/mobilenet_cityscapes.tgz) |
| DeepLabv3+/MobileNetv2 | quant_post  | 67.59 (-2.22) |      2.1       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/deeplabv3_mobilenetv2_2049x1025_quant_post.tar) |
| DeepLabv3+/MobileNetv2 | quant_aware | 68.33 (-1.48) |      2.1       | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/deeplabv3_mobilenetv2_2049x1025_quant_aware.tar) |

B
Bai Yifan 已提交
195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220
图像分割模型Lite时延(ms), 输入尺寸769x769

| 设备    | 模型类型               | 压缩策略      | armv7 Thread 1 | armv7 Thread 2 | armv7 Thread 4 | armv8 Thread 1 | armv8 Thread 2 | armv8 Thread 4 |
| ------- | ---------------------- | ------------- | -------------- | -------------- | -------------- | -------------- | -------------- | -------------- |
| 高通835 | Deeplabv3- MobileNetV1 | FP32 baseline | 1227.9894      | 734.1922       | 527.9592       | 1109.96        | 699.3818       | 479.0818       |
| 高通835 | Deeplabv3- MobileNetV1 | quant_aware   | 848.6544       | 512.785        | 382.9915       | 752.3573       | 455.0901       | 307.8808       |
| 高通835 | Deeplabv3- MobileNetV1 | quant_post    | 840.2323       | 510.103        | 371.9315       | 748.9401       | 452.1745       | 309.2084       |
| 高通835 | Deeplabv3-MobileNetV2  | FP32 baseline | 1282.8126      | 793.2064       | 653.6538       | 1193.9908      | 737.1827       | 593.4522       |
| 高通835 | Deeplabv3-MobileNetV2  | quant_aware   | 976.0495       | 659.0541       | 513.4279       | 892.1468       | 582.9847       | 484.7512       |
| 高通835 | Deeplabv3-MobileNetV2  | quant_post    | 981.44         | 658.4969       | 538.6166       | 885.3273       | 586.1284       | 484.0018       |
| 高通855 | Deeplabv3- MobileNetV1 | FP32 baseline | 568.8748       | 339.8578       | 278.6316       | 420.6031       | 281.3197       | 217.5222       |
| 高通855 | Deeplabv3- MobileNetV1 | quant_aware   | 608.7578       | 347.2087       | 260.653        | 241.2394       | 177.3456       | 143.9178       |
| 高通855 | Deeplabv3- MobileNetV1 | quant_post    | 609.0142       | 347.3784       | 259.9825       | 239.4103       | 180.1894       | 139.9178       |
| 高通855 | Deeplabv3-MobileNetV2  | FP32 baseline | 639.4425       | 390.1851       | 322.7014       | 477.7667       | 339.7411       | 262.2847       |
| 高通855 | Deeplabv3-MobileNetV2  | quant_aware   | 703.7275       | 497.689        | 417.1296       | 394.3586       | 300.2503       | 239.9204       |
| 高通855 | Deeplabv3-MobileNetV2  | quant_post    | 705.7589       | 474.4076       | 427.2951       | 394.8352       | 297.4035       | 264.6724       |
| 麒麟970 | Deeplabv3- MobileNetV1 | FP32 baseline | 1682.1792      | 1437.9774      | 1181.0246      | 1261.6739      | 1068.6537      | 690.8225       |
| 麒麟970 | Deeplabv3- MobileNetV1 | quant_aware   | 1062.3394      | 1248.1014      | 878.3157       | 774.6356       | 710.6277       | 528.5376       |
| 麒麟970 | Deeplabv3- MobileNetV1 | quant_post    | 1109.1917      | 1339.6218      | 866.3587       | 771.5164       | 716.5255       | 500.6497       |
| 麒麟970 | Deeplabv3-MobileNetV2  | FP32 baseline | 1771.1301      | 1746.0569      | 1222.4805      | 1448.9739      | 1192.4491      | 760.606        |
| 麒麟970 | Deeplabv3-MobileNetV2  | quant_aware   | 1320.2905      | 921.4522       | 676.0732       | 1145.8801      | 821.5685       | 590.1713       |
| 麒麟970 | Deeplabv3-MobileNetV2  | quant_post    | 1320.386       | 918.5328       | 672.2481       | 1020.753       | 820.094        | 591.4114       |




B
Bai Yifan 已提交
221 222 223 224 225 226 227 228

### 3.2 剪裁

|   模型    |     压缩方法      |     mIoU      | 模型体积(MB) | GFLOPs |                             下载                             |
| :-------: | :---------------: | :-----------: | :------------: | :----: | :----------------------------------------------------------: |
| fast-scnn |     baseline      |     69.64     |       11       | 14.41  | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/fast_scnn_cityscape.tar) |
| fast-scnn | uniform  -17.07%  | 69.58 (-0.06) |      8.5       | 11.95  | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/fast_scnn_cityscape_uniform-17.tar) |
| fast-scnn | sensitive -47.60% | 66.68 (-2.96) |      5.7       |  7.55  | [下载链接](https://paddlemodels.bj.bcebos.com/PaddleSlim/fast_scnn_cityscape_sensitive-47.tar) |