diff --git a/model_zoo/official/cv/deeplabv3/README.md b/model_zoo/official/cv/deeplabv3/README.md
index bbd9949b83..1f253a1047 100644
--- a/model_zoo/official/cv/deeplabv3/README.md
+++ b/model_zoo/official/cv/deeplabv3/README.md
@@ -496,7 +496,7 @@ Note: There OS is output stride, and MS is multiscale.
| Loss Function | Softmax Cross Entropy |
| Outputs | probability |
| Loss | 0.0065883575 |
-| Speed | 60 ms/step(1pc, s16)
480 ms/step(8pcs, s16)
244 ms/step (8pcs, s8) |
+| Speed | 60 fps(1pc, s16)
480 fps(8pcs, s16)
244 fps (8pcs, s8) |
| Total time | 8pcs: 706 mins |
| Parameters (M) | 58.2 |
| Checkpoint for Fine tuning | 443M (.ckpt file) |
diff --git a/model_zoo/official/cv/deeplabv3/README_CN.md b/model_zoo/official/cv/deeplabv3/README_CN.md
index 4a2c52c54f..a5e221a7ed 100644
--- a/model_zoo/official/cv/deeplabv3/README_CN.md
+++ b/model_zoo/official/cv/deeplabv3/README_CN.md
@@ -510,7 +510,7 @@ python ${train_code_path}/eval.py --data_root=/PATH/TO/DATA \
| 损失函数 | Softmax交叉熵 |
| 输出 | 概率 |
| 损失 | 0.0065883575 |
-| 速度 | 31毫秒/步(单卡,s8)
234毫秒/步(8卡,s8) |
+| 速度 | 31 帧数/秒(单卡,s8)
234 帧数/秒(8卡,s8) |
| 微调检查点 | 443M (.ckpt文件) |
| 脚本 | [链接](https://gitee.com/mindspore/mindspore/tree/master/model_zoo/official/cv/deeplabv3) |
diff --git a/model_zoo/official/cv/deeplabv3/export.py b/model_zoo/official/cv/deeplabv3/export.py
index 7bbbf77239..d194546d87 100644
--- a/model_zoo/official/cv/deeplabv3/export.py
+++ b/model_zoo/official/cv/deeplabv3/export.py
@@ -17,7 +17,7 @@ import argparse
import numpy as np
from mindspore import Tensor, context, load_checkpoint, load_param_into_net, export
-
+from eval import BuildEvalNetwork
from src.nets import net_factory
parser = argparse.ArgumentParser(description='checkpoint export')
@@ -43,6 +43,7 @@ if __name__ == '__main__':
network = net_factory.nets_map['deeplab_v3_s16']('eval', args.num_classes, 16, True)
else:
network = net_factory.nets_map['deeplab_v3_s8']('eval', args.num_classes, 8, True)
+ network = BuildEvalNetwork(network)
param_dict = load_checkpoint(args.ckpt_file)
# load the parameter into net