MCPcopy Create free account
hub / github.com/WenmuZhou/PSENet.pytorch

github.com/WenmuZhou/PSENet.pytorch @1.0

Chat with this repo
repository ↗ · DeepWiki ↗ · release 1.0 ↗ · + Follow
1,158 symbols 2,338 edges 50 files 197 documented · 17% updated 5y ago1.0 · 2019-07-24★ 45925 open issues

Browse by type

Functions 799 Types & classes 359
What it actually does AI analysis from the code graph — generated when you open this
loading…
README

Shape Robust Text Detection with Progressive Scale Expansion Network

Requirements

  • pytorch 1.1
  • torchvision 0.3
  • pyclipper
  • opencv3

Update

20190401

  1. add author loss, the results are compared in Performance

Download

resnet50 and resnet152 model on icdar 2015:

  1. bauduyun extract code: rxjf

  2. google drive

Data Preparation

img
│   1.jpg
│   2.jpg   
│       ...
gt
│   gt_1.txt
│   gt_2.txt
|       ...

Train

  1. config the trainroot,testrootin config.py
  2. use fellow script to run
python3 train.py

Test

eval.py is used to test model on test dataset

  1. config model_path, data_path, gt_path, save_path in eval.py
  2. use fellow script to test
python3 eval.py

Predict

predict.py is used to inference on single image

  1. config model_path, img_path, gt_path, save_path in predict.py
  2. use fellow script to predict
python3 predict.py

The project is still under development.

Performance

ICDAR 2015

only train on ICDAR2015 dataset with single NVIDIA 1080Ti

my implementation with my loss use adam and warm_up

Method Precision (%) Recall (%) F-measure (%) FPS(1080Ti)
PSENet-1s with resnet50 batch 8 81.13 77.03 79.03 1.76
PSENet-2s with resnet50 batch 8 81.36 77.13 79.18 3.55
PSENet-4s with resnet50 batch 8 81.00 76.55 78.71 4.43
PSENet-1s with resnet152 batch 4 85.45 80.06 82.67 1.48
PSENet-2s with resnet152 batch 4 85.42 80.11 82.68 2.56
PSENet-4s with resnet152 batch 4 83.93 79.00 81.39 2.99

my implementation with my loss use adam and MultiStepLR

Method Precision (%) Recall (%) F-measure (%) FPS(1080Ti)
PSENet-1s with resnet50 batch 8 83.39 79.29 81.29 1.76
PSENet-2s with resnet50 batch 8 83.22 79.05 81.08 3.55
PSENet-4s with resnet50 batch 8 82.57 78.23 80.34 4.43
PSENet-1s with resnet152 batch 4 85.33 79.87 82.51 1.48
PSENet-2s with resnet152 batch 4 85.36 79.73 82.45 2.56
PSENet-4s with resnet152 batch 4 83.95 78.86 81.33 2.99

my implementation with author loss use adam and warm_up

Method Precision (%) Recall (%) F-measure (%) FPS(1080Ti)
PSENet-1s with resnet50 batch 8 83.33 77.75 80.44 1.76
PSENet-2s with resnet50 batch 8 83.01 77.66 80.24 3.55
PSENet-4s with resnet50 batch 8 82.38 76.98 79.59 4.43
PSENet-1s with resnet152 batch 4 85.16 79.87 82.43 1.48
PSENet-2s with resnet152 batch 4 85.03 79.63 82.24 2.56
PSENet-4s with resnet152 batch 4 84.53S 79.20 81.77 2.99

my implementation with author loss use adam and MultiStepLR

Method Precision (%) Recall (%) F-measure (%) FPS(1080Ti)
PSENet-1s with resnet50 batch 8 83.93 79.48 81.65 1.76
PSENet-2s with resnet50 batch 8 84.17 79.63 81.84 3.55
PSENet-4s with resnet50 batch 8 83.50 78.71 81.04 4.43
PSENet-1s with resnet152 batch 4 85.16 79.58 82.28 1.48
PSENet-2s with resnet152 batch 4 85.13 79.15 82.03 2.56
PSENet-4s with resnet152 batch 4 84.40 78.71 81.46 2.99

official implementation use SGD and StepLR

Method Precision (%) Recall (%) F-measure (%) FPS(1080Ti)
PSENet-1s with resnet50 batch 8 84.15 80.26 82.16 1.76
PSENet-2s with resnet50 batch 8 83.61 79.82 81.67 3.72
PSENet-4s with resnet50 batch 8 81.90 78.23 80.03 4.51
PSENet-1s with resnet152 batch 4 82.87 78.76 80.77 1.53
PSENet-2s with resnet152 batch 4 82.33 78.33 80.28 2.61
PSENet-4s with resnet152 batch 4 81.19 77.13 79.11 3.00

examples

reference

  1. https://github.com/liuheng92/tensorflow_PSENet
  2. https://github.com/whai362/PSENet

Core symbols most depended-on inside this repo

Shape

Method 508
Class 350
Function 291
Enum 9

Languages

C++88%
Python12%

Modules by API surface

pse/include/pybind11/pytypes.h197 symbols
pse/include/pybind11/cast.h167 symbols
pse/include/pybind11/numpy.h147 symbols
pse/include/pybind11/attr.h89 symbols
pse/include/pybind11/pybind11.h72 symbols
pse/include/pybind11/detail/common.h64 symbols
pse/include/pybind11/stl.h38 symbols
pse/include/pybind11/detail/class.h29 symbols
pse/include/pybind11/class_support.h29 symbols
pse/include/pybind11/eigen.h28 symbols
pse/include/pybind11/detail/init.h23 symbols
models/mobilenetv3.py18 symbols

For agents

$ claude mcp add PSENet.pytorch \
  -- python -m otcore.mcp_server <graph>

⬇ download graph artifact

Ask about this repo answers extend the page