# FCENet - [1. Introduction](#1) - [2. Environment](#2) - [3. Model Training / Evaluation / Prediction](#3) - [3.1 Training](#3-1) - [3.2 Evaluation](#3-2) - [3.3 Prediction](#3-3) - [4. Inference and Deployment](#4) - [4.1 Python Inference](#4-1) - [4.2 C++ Inference](#4-2) - [4.3 Serving](#4-3) - [4.4 More](#4-4) - [5. FAQ](#5) ## 1. Introduction Paper: > [Fourier Contour Embedding for Arbitrary-Shaped Text Detection](https://arxiv.org/abs/2104.10442) > Yiqin Zhu and Jianyong Chen and Lingyu Liang and Zhanghui Kuang and Lianwen Jin and Wayne Zhang > CVPR, 2021 On the CTW1500 dataset, the text detection result is as follows: |Model|Backbone|Configuration|Precision|Recall|Hmean|Download| | --- | --- | --- | --- | --- | --- | --- | | FCE | ResNet50_dcn | [configs/det/det_r50_vd_dcn_fce_ctw.yml](../../configs/det/det_r50_vd_dcn_fce_ctw.yml)| 88.39%|82.18%|85.27%|[trained model](https://paddleocr.bj.bcebos.com/contribution/det_r50_dcn_fce_ctw_v2.0_train.tar)| ## 2. Environment Please prepare your environment referring to [prepare the environment](./environment_en.md) and [clone the repo](./clone_en.md). ## 3. Model Training / Evaluation / Prediction The above FCE model is trained using the CTW1500 text detection public dataset. For the download of the dataset, please refer to [ocr_datasets](./dataset/ocr_datasets_en.md). After the data download is complete, please refer to [Text Detection Training Tutorial](./detection_en.md) for training. PaddleOCR has modularized the code structure, so that you only need to **replace the configuration file** to train different detection models. ## 4. Inference and Deployment ### 4.1 Python Inference First, convert the model saved in the FCE text detection training process into an inference model. Taking the model based on the Resnet50_vd_dcn backbone network and trained on the CTW1500 English dataset as example ([model download link](https://paddleocr.bj.bcebos.com/contribution/det_r50_dcn_fce_ctw_v2.0_train.tar)), you can use the following command to convert: ```shell python3 tools/export_model.py -c configs/det/det_r50_vd_dcn_fce_ctw.yml -o Global.pretrained_model=./det_r50_dcn_fce_ctw_v2.0_train/best_accuracy Global.save_inference_dir=./inference/det_fce ``` FCE text detection model inference, to perform non-curved text detection, you can run the following commands: ```shell python3 tools/infer/predict_det.py --image_dir="./doc/imgs_en/img_10.jpg" --det_model_dir="./inference/det_fce/" --det_algorithm="FCE" --det_fce_box_type=quad ``` The visualized text detection results are saved to the `./inference_results` folder by default, and the name of the result file is prefixed with 'det_res'. Examples of results are as follows: ![](../imgs_results/det_res_img_10_fce.jpg) If you want to perform curved text detection, you can execute the following command: ```shell python3 tools/infer/predict_det.py --image_dir="./doc/imgs_en/img623.jpg" --det_model_dir="./inference/det_fce/" --det_algorithm="FCE" --det_fce_box_type=poly ``` The visualized text detection results are saved to the `./inference_results` folder by default, and the name of the result file is prefixed with 'det_res'. Examples of results are as follows: ![](../imgs_results/det_res_img623_fce.jpg) **Note**: Since the CTW1500 dataset has only 1,000 training images, mainly for English scenes, the above model has very poor detection result on Chinese or curved text images. ### 4.2 C++ Inference Since the post-processing is not written in CPP, the FCE text detection model does not support CPP inference. ### 4.3 Serving Not supported ### 4.4 More Not supported ## 5. FAQ ## Citation ```bibtex @InProceedings{zhu2021fourier, title={Fourier Contour Embedding for Arbitrary-Shaped Text Detection}, author={Yiqin Zhu and Jianyong Chen and Lingyu Liang and Zhanghui Kuang and Lianwen Jin and Wayne Zhang}, year={2021}, booktitle = {CVPR} } ```