Official implementations of PSENet, PAN and PAN++.

Overview

News

  • (2021/11/03) Paddle implementation of PAN, see Paddle-PANet. Thanks @simplify23.
  • (2021/04/08) PSENet and PAN are included in MMOCR.

Introduction

This repository contains the official implementations of PSENet, PAN, PAN++, and FAST [coming soon].

Text Detection
Text Spotting

Installation

First, clone the repository locally:

git clone https://github.com/whai362/pan_pp.pytorch.git

Then, install PyTorch 1.1.0+, torchvision 0.3.0+, and other requirements:

conda install pytorch torchvision -c pytorch
pip install -r requirement.txt

Finally, compile codes of post-processing:

# build pse and pa algorithms
sh ./compile.sh

Dataset

Please refer to dataset/README.md for dataset preparation.

Training

CUDA_VISIBLE_DEVICES=0,1,2,3 python train.py ${CONFIG_FILE}

For example:

CUDA_VISIBLE_DEVICES=0,1,2,3 python train.py config/pan/pan_r18_ic15.py

Testing

Evaluate the performance

python test.py ${CONFIG_FILE} ${CHECKPOINT_FILE}
cd eval/
./eval_{DATASET}.sh

For example:

python test.py config/pan/pan_r18_ic15.py checkpoints/pan_r18_ic15/checkpoint.pth.tar
cd eval/
./eval_ic15.sh

Evaluate the speed

python test.py ${CONFIG_FILE} ${CHECKPOINT_FILE} --report_speed

For example:

python test.py config/pan/pan_r18_ic15.py checkpoints/pan_r18_ic15/checkpoint.pth.tar --report_speed

Citation

Please cite the related works in your publications if it helps your research:

PSENet

@inproceedings{wang2019shape,
  title={Shape Robust Text Detection with Progressive Scale Expansion Network},
  author={Wang, Wenhai and Xie, Enze and Li, Xiang and Hou, Wenbo and Lu, Tong and Yu, Gang and Shao, Shuai},
  booktitle={Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition},
  pages={9336--9345},
  year={2019}
}

PAN

@inproceedings{wang2019efficient,
  title={Efficient and Accurate Arbitrary-Shaped Text Detection with Pixel Aggregation Network},
  author={Wang, Wenhai and Xie, Enze and Song, Xiaoge and Zang, Yuhang and Wang, Wenjia and Lu, Tong and Yu, Gang and Shen, Chunhua},
  booktitle={Proceedings of the IEEE International Conference on Computer Vision},
  pages={8440--8449},
  year={2019}
}

PAN++

@article{wang2021pan++,
  title={PAN++: Towards Efficient and Accurate End-to-End Spotting of Arbitrarily-Shaped Text},
  author={Wang, Wenhai and Xie, Enze and Li, Xiang and Liu, Xuebo and Liang, Ding and Zhibo, Yang and Lu, Tong and Shen, Chunhua},
  journal={IEEE Transactions on Pattern Analysis and Machine Intelligence},
  year={2021},
  publisher={IEEE}
}

FAST

@misc{chen2021fast,
  title={FAST: Searching for a Faster Arbitrarily-Shaped Text Detector with Minimalist Kernel Representation}, 
  author={Zhe Chen and Wenhai Wang and Enze Xie and ZhiBo Yang and Tong Lu and Ping Luo},
  year={2021},
  eprint={2111.02394},
  archivePrefix={arXiv},
  primaryClass={cs.CV}
}

License

This project is developed and maintained by IMAGINE [email protected] Key Laboratory for Novel Software Technology, Nanjing University.

IMAGINE Lab

This project is released under the Apache 2.0 license.

Comments
  • Evaluation of the performance result

    Evaluation of the performance result

    Hello Author, First of all, I would like to appreciate your work and effort. I have tried your repo. The evaluation code gives me an error of the "The sample 199 not present in GT," but the label text is there. When I tried to see the result via visualizing it on the images, it seems good. Let me know if there is any solution from your side.

    opened by dikubab 9
  • _pickle.PicklingError: Can't pickle <class 'cPolygon.Error'>: import of module 'cPolygon' failed

    _pickle.PicklingError: Can't pickle : import of module 'cPolygon' failed

    more complete log as belows: Epoch: [1 | 600] /data/tools/anaconda3/envs/zyl_torch16/lib/python3.7/site-packages/torch/nn/functional.py:2941: UserWarning: nn.functional.upsample is deprecated. Use nn.functional.interpolate instead. warnings.warn("nn.functional.upsample is deprecated. Use nn.functional.interpolate instead.") /data/tools/anaconda3/envs/zyl_torch16/lib/python3.7/site-packages/torch/nn/functional.py:3121: UserWarning: Default upsampling behavior when mode=bilinear is changed to align_corners=False since 0.4.0. Please specify align_corners=True if the old behavior is desired. See the documentation of nn.Upsample for details. "See the documentation of nn.Upsample for details.".format(mode)) (1/374) LR: 0.001000 | Batch: 2.668s | Total: 0min | ETA: 17min | Loss: 1.619 | Loss(text/kernel/emb/rec): 0.680/0.193/0.746/0.000 | IoU(text/kernel): 0.324/0.335 | Acc rec: 0.000 Traceback (most recent call last): File "/data/tools/anaconda3/envs/zyl_torch16/lib/python3.7/multiprocessing/queues.py", line 236, in _feed obj = _ForkingPickler.dumps(obj) File "/data/tools/anaconda3/envs/zyl_torch16/lib/python3.7/multiprocessing/reduction.py", line 51, in dumps cls(buf, protocol).dump(obj) _pickle.PicklingError: Can't pickle <class 'cPolygon.Error'>: import of module 'cPolygon' failed

    the code runs normally when using the CTW1500 datasets. but encounter errors when using my own datasets.

    it seems fine in the first run (1/374), what is wrong ? I have no idea.

    opened by Zhang-O 5
  • 关于训练的问题

    关于训练的问题

    您好!我现在在自己的数据上进行训练,训练过程是这样的 image Epoch: [212 | 600] (1/198) LR: 0.000677 | Batch: 3.934s | Total: 0min | ETA: 13min | Loss: 0.752 | Loss(text/kernel/emb/rec): 0.493/0.199/0.059/0.000 | IoU(text/kernel): 0.055/0.553 | Acc rec: 0.000 (21/198) LR: 0.000677 | Batch: 1.089s | Total: 0min | ETA: 3min | Loss: 0.731 | Loss(text/kernel/emb/rec): 0.478/0.199/0.054/0.000 | IoU(text/kernel): 0.048/0.482 | Acc rec: 0.000 (41/198) LR: 0.000677 | Batch: 1.022s | Total: 1min | ETA: 3min | Loss: 0.732 | Loss(text/kernel/emb/rec): 0.478/0.198/0.056/0.000 | IoU(text/kernel): 0.049/0.476 | Acc rec: 0.000 这个Acc rec一直是0,我终止训练后,在测试数据上进行测试时,output输出的是空的,请问是怎么回事呢,感谢啦!

    opened by mayidu 3
  • 关于后处理的疑问

    关于后处理的疑问

    1. 后处理的代码中当kernel中两个连通域的面积比大于max_rate时,将这两个连通域的flag赋值为1,在扩充时,必须同时满足当前扩充的点所属的连通域的flag值为1且与kernal的similar vector距离大于3时才不扩充该点。请问设flag这步操作的作用是什么,直接判断与Kernel的similar vector的距离可以吗?
    2. 论文中扩充的点与kernel相似向量的欧式距离thresh值为6,代码中为3,请问实际应用中这个值跟什么有关系,是数据集的某些特点吗?
    opened by jewelc92 3
  • Regarding pa.pyx

    Regarding pa.pyx

    Hi,

    I try to run your code and figure out that in your last line in pa.pyx

    return _pa(kernels[:-1], emb, label, cc, kernel_num, label_num, min_area)

    Looks like this should be

    return _pa(kernels, emb, label, cc, kernel_num, label_num, min_area)

    So that we can scan over all kernels (you skip the last kernel) and there is no crash in this function. Am I correct?

    Thanks.

    opened by liuch37 3
  • AttributeError: 'Namespace' object has no attribute 'resume'

    AttributeError: 'Namespace' object has no attribute 'resume'

    PAN++ic15,An error appears when trying to test the model:

    reading type: pil. Traceback (most recent call last): File "test.py", line 155, in main(args) File "test.py", line 138, in main print("No checkpoint found at '{}'".format(args.resume)) AttributeError: 'Namespace' object has no attribute 'resume'

    opened by lrjj 2
  • 训练Total Text时遇到的问题

    训练Total Text时遇到的问题

    运行 python train.py config/pan/pan_r18_tt.py 后,出现如下情况: p1 Traceback (most recent call last): File "/home/dell2/anaconda3/envs/pannet/lib/python3.6/multiprocessing/queues.py", line 234, in _feed obj = _ForkingPickler.dumps(obj) File "/home/dell2/anaconda3/envs/pannet/lib/python3.6/multiprocessing/reduction.py", line 51, in dumps cls(buf, protocol).dump(obj) _pickle.PicklingError: Can't pickle <class 'cPolygon.Error'>: import of module 'cPolygon' failed 似乎是迭代过程中出现的问题且只出现在训练TT数据集的时候 请问出现这种情况该怎样解决呢?谢谢您

    opened by mashumli 2
  • 执行test.py提示TypeError: 'module' object is not callable

    执行test.py提示TypeError: 'module' object is not callable

    将模型路径和config文件路径配置好了之后,执行python test.py,提示如下: Traceback (most recent call last): File "test.py", line 117, in main(args) File "test.py", line 107, in main test(test_loader, model, cfg) File "test.py", line 56, in test outputs = model(**data) File "/home/ethony/anaconda3/envs/ocr/lib/python3.6/site-packages/torch/nn/modules/module.py", line 547, in call result = self.forward(*input, **kwargs) File "/media/ethony/C14D581BDA18EBFA/lyg_datas_and_code/OCR_work/pan_pp.pytorch-master/models/pan.py", line 104, in forward det_res = self.det_head.get_results(det_out, img_metas, cfg) File "/media/ethony/C14D581BDA18EBFA/lyg_datas_and_code/OCR_work/pan_pp.pytorch-master/models/head/pa_head.py", line 65, in get_results label = pa(kernels, emb) TypeError: 'module' object is not callable 看提示应该是model/post_processing下的pa没有正确导入,导入为模块了,这应该怎么解决呢

    opened by ethanlighter 2
  • problems in train.py

    problems in train.py

    Hi. When I run 'python train.py config/pan/pan_r18_ic15.py' , the errors are as followings: Do you know how to solve the problem? Thank you very much. Traceback (most recent call last): File "train.py", line 234, in main(args) File "train.py", line 216, in main train(train_loader, model, optimizer, epoch, start_iter, cfg) File "train.py", line 41, in train for iter, data in enumerate(train_loader): File "D:\Anaconda3\lib\site-packages\torch\utils\data\dataloader.py", line 435, in next data = self._next_data() File "D:\Anaconda3\lib\site-packages\torch\utils\data\dataloader.py", line 1085, in _next_data return self._process_data(data) File "D:\Anaconda3\lib\site-packages\torch\utils\data\dataloader.py", line 1111, in _process_data data.reraise() File "D:\Anaconda3\lib\site-packages\torch_utils.py", line 428, in reraise raise self.exc_type(msg) TypeError: function takes exactly 5 arguments (1 given)

    opened by YUDASHUAI916 2
  • not sure about run compile.sh

    not sure about run compile.sh

    (zyl_torch16) [email protected]:/data/zhangyl/pan_pp.pytorch-master$ sh ./compile.sh Compiling pa.pyx because it depends on /data/tools/anaconda3/envs/zyl_torch16/lib/python3.7/site-packages/numpy/init.pxd. [1/1] Cythonizing pa.pyx /data/tools/anaconda3/envs/zyl_torch16/lib/python3.7/site-packages/Cython/Compiler/Main.py:369: FutureWarning: Cython directive 'language_level' not set, using 2 for now (Py2). This will change in a later release! File: /data/zhangyl/pan_pp.pytorch-master/models/post_processing/pa/pa.pyx tree = Parsing.p_module(s, pxd, full_module_name) running build_ext building 'pa' extension creating build creating build/temp.linux-x86_64-3.7 gcc -pthread -B /data/tools/anaconda3/envs/zyl_torch16/compiler_compat -Wl,--sysroot=/ -Wsign-compare -DNDEBUG -g -fwrapv -O3 -Wall -Wstrict-prototypes -fPIC -I/data/tools/anaconda3/envs/zyl_torch16/lib/python3.7/site-packages/numpy/core/include -I/data/tools/anaconda3/envs/zyl_torch16/include/python3.7m -c pa.cpp -o build/temp.linux-x86_64-3.7/pa.o -O3 cc1plus: warning: command line option ‘-Wstrict-prototypes’ is valid for C/ObjC but not for C++ In file included from /data/tools/anaconda3/envs/zyl_torch16/lib/python3.7/site-packages/numpy/core/include/numpy/ndarraytypes.h:1822:0, from /data/tools/anaconda3/envs/zyl_torch16/lib/python3.7/site-packages/numpy/core/include/numpy/ndarrayobject.h:12, from /data/tools/anaconda3/envs/zyl_torch16/lib/python3.7/site-packages/numpy/core/include/numpy/arrayobject.h:4, from pa.cpp:647: /data/tools/anaconda3/envs/zyl_torch16/lib/python3.7/site-packages/numpy/core/include/numpy/npy_1_7_deprecated_api.h:17:2: warning: #warning "Using deprecated NumPy API, disable it with " "#define NPY_NO_DEPRECATED_API NPY_1_7_API_VERSION" [-Wcpp] #warning "Using deprecated NumPy API, disable it with "
    ^~~~~~~ g++ -pthread -shared -B /data/tools/anaconda3/envs/zyl_torch16/compiler_compat -L/data/tools/anaconda3/envs/zyl_torch16/lib -Wl,-rpath=/data/tools/anaconda3/envs/zyl_torch16/lib -Wl,--no-as-needed -Wl,--sysroot=/ build/temp.linux-x86_64-3.7/pa.o -o /data/zhangyl/pan_pp.pytorch-master/models/post_processing/pa/pa.cpython-37m-x86_64-linux-gnu.so (zyl_torch16) [email protected]:/data/zhangyl/pan_pp.pytorch-master$

    this is the compile history, I am not sure whether is successully build or not.

    opened by Zhang-O 2
  • morphology operations from kornia

    morphology operations from kornia

    Hi,

    Your FAST paper is really amazing! While you already have an implementation of erosion/dilation, let me offer using our set of morphology, implemented in pyre pytorch: https://kornia.readthedocs.io/en/latest/morphology.html

    https://kornia-tutorials.readthedocs.io/en/master/morphology_101.html

    Best, Dmytro.

    opened by ducha-aiki 1
  • The sample 199 not present in GT

    The sample 199 not present in GT

    Hello Author, First of all, I would like to appreciate your work and effort. I have tried your repo. The evaluation code gives me an error of the "The sample 199 not present in GT," but the label text is there. When I tried to see the result via visualizing it on the images, it seems good. Let me know if there is any solution from your side.

    opened by zeng-cy 1
  • How  to predict a new image using the training weight?it doesn't work below.

    How to predict a new image using the training weight?it doesn't work below.

    How to predict a new image using the training weight?it doesn't work below.

    python test.py config/pan/pan_r18_ic15.py checkpoints/pan_r18_ic15/checkpoint.pth.tar cd eval/ ./eval_ic15.sh

    please inform me with [email protected] or wechat SanQian-2012,thanks you so much.

    Originally posted by @Devin521314 in https://github.com/whai362/pan_pp.pytorch/issues/91#issuecomment-1233810612

    opened by Devin521314 0
  • Why rec encoder use EOS? not SOS

    Why rec encoder use EOS? not SOS

    hi: I find there is no 'SOS' in code, I understand SOS should be embedding at the beginning. Please tell me ,thanks! ---------------code----------------------------------------------- class Encoder(nn.Module): def init(self, hidden_dim, voc, char2id, id2char): super(Encoder, self).init() self.hidden_dim = hidden_dim self.vocab_size = len(voc) self.START_TOKEN = char2id['EOS'] self.emb = nn.Embedding(self.vocab_size, self.hidden_dim) self.att = MultiHeadAttentionLayer(self.hidden_dim, 8)

    def forward(self, x):
        batch_size, feature_dim, H, W = x.size()
        x_flatten = x.view(batch_size, feature_dim, H * W).permute(0, 2, 1)
        st = x.new_full((batch_size,), self.START_TOKEN, dtype=torch.long)
        emb_st = self.emb(st)
        holistic_feature, _ = self.att(emb_st, x_flatten, x_flatten)
        return 
    
    opened by Patickk 0
Releases(v1)
Group Fisher Pruning for Practical Network Compression(ICML2021)

Group Fisher Pruning for Practical Network Compression (ICML2021) By Liyang Liu*, Shilong Zhang*, Zhanghui Kuang, Jing-Hao Xue, Aojun Zhou, Xinjiang W

Shilong Zhang 129 Dec 13, 2022
Vector Neurons: A General Framework for SO(3)-Equivariant Networks

Vector Neurons: A General Framework for SO(3)-Equivariant Networks Created by Congyue Deng, Or Litany, Yueqi Duan, Adrien Poulenard, Andrea Tagliasacc

Congyue Deng 332 Dec 29, 2022
Source code for "FastBERT: a Self-distilling BERT with Adaptive Inference Time".

FastBERT Source code for "FastBERT: a Self-distilling BERT with Adaptive Inference Time". Good News 2021/10/29 - Code: Code of FastPLM is released on

Weijie Liu 584 Jan 02, 2023
ShinRL: A Library for Evaluating RL Algorithms from Theoretical and Practical Perspectives

Status: Under development (expect bug fixes and huge updates) ShinRL: A Library for Evaluating RL Algorithms from Theoretical and Practical Perspectiv

37 Dec 28, 2022
Classify music genre from a 10 second sound stream using a Neural Network.

MusicGenreClassification Academic research in the field of Deep Learning (Deep Neural Networks) and Sound Processing, Tel Aviv University. Featured in

Matan Lachmish 453 Dec 27, 2022
Run Keras models in the browser, with GPU support using WebGL

**This project is no longer active. Please check out TensorFlow.js.** The Keras.js demos still work but is no longer updated. Run Keras models in the

Leon Chen 4.9k Dec 29, 2022
Soomvaar is the repo which 🏩 contains different collection of 👨‍💻🚀code in Python and 💫✨Machine 👬🏼 learning algorithms📗📕 that is made during 📃 my practice and learning of ML and Python✨💥

Soomvaar 📌 Introduction Soomvaar is the collection of various codes implement in machine learning and machine learning algorithms with python on coll

Felix-Ayush 42 Dec 30, 2022
Gym Threat Defense

Gym Threat Defense The Threat Defense environment is an OpenAI Gym implementation of the environment defined as the toy example in Optimal Defense Pol

Hampus Ramström 5 Dec 08, 2022
A high performance implementation of HDBSCAN clustering.

HDBSCAN HDBSCAN - Hierarchical Density-Based Spatial Clustering of Applications with Noise. Performs DBSCAN over varying epsilon values and integrates

2.3k Jan 02, 2023
User-friendly bulk RNAseq deconvolution using simulated annealing

Welcome to cellanneal - The user-friendly application for deconvolving omics data sets. cellanneal is an application for deconvolving biological mixtu

11 Dec 16, 2022
Allele-specific pipeline for unbiased read mapping(WIP), QTL discovery(WIP), and allelic-imbalance analysis

WASP2 (Currently in pre-development): Allele-specific pipeline for unbiased read mapping(WIP), QTL discovery(WIP), and allelic-imbalance analysis Requ

McVicker Lab 2 Aug 11, 2022
Inferred Model-based Fuzzer

IMF: Inferred Model-based Fuzzer IMF is a kernel API fuzzer that leverages an automated API model inferrence techinque proposed in our paper at CCS. I

SoftSec Lab 104 Sep 28, 2022
Designing a Minimal Retrieve-and-Read System for Open-Domain Question Answering (NAACL 2021)

Designing a Minimal Retrieve-and-Read System for Open-Domain Question Answering Abstract In open-domain question answering (QA), retrieve-and-read mec

Clova AI Research 34 Apr 13, 2022
[ICML 2020] DrRepair: Learning to Repair Programs from Error Messages

DrRepair: Learning to Repair Programs from Error Messages This repo provides the source code & data of our paper: Graph-based, Self-Supervised Program

Michihiro Yasunaga 155 Jan 08, 2023
Ağ tarayıcı.Gönderdiği paketler ile ağa bağlı olan cihazların IP adreslerini gösterir.

NetScanner.py Ağ tarayıcı.Gönderdiği paketler ile ağa bağlı olan cihazların IP adreslerini gösterir. Linux'da Kullanımı: git clone https://github.com/

4 Aug 23, 2021
code and models for "Laplacian Pyramid Reconstruction and Refinement for Semantic Segmentation"

Laplacian Pyramid Reconstruction and Refinement for Semantic Segmentation This repository contains code and models for the method described in: Golnaz

55 Jun 18, 2022
A PyTorch re-implementation of the paper 'Exploring Simple Siamese Representation Learning'. Reproduced the 67.8% Top1 Acc on ImageNet.

Exploring simple siamese representation learning This is a PyTorch re-implementation of the SimSiam paper on ImageNet dataset. The results match that

Taojiannan Yang 72 Nov 09, 2022
A simple code to perform canny edge contrast detection on images.

CECED-Canny-Edge-Contrast-Enhanced-Detection A simple code to perform canny edge contrast detection on images. A simple code to process images using c

Happy N. Monday 3 Feb 15, 2022
This repo is for segmentation of T2 hyp regions in gliomas.

T2-Hyp-Segmentor This repo is for segmentation of T2 hyp regions in gliomas. By downloading the model from here you can use it to segment your T2w ima

1 Jan 18, 2022