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Project Introduction

This project is based on CNN+BLSTM+CTC to realize verification code identification. This project is only for deployment models, If you need to train the model, please move to https://github.com/kerlomz/captcha_trainer

Informed

  1. The default requirements.txt will install CPU version, Change "requirements.txt" from "TensorFlow" to "TensorFlow-GPU" to Switch to GPU version, Use the GPU version to install the corresponding CUDA and cuDNN.
  2. demo.py: An example of how to call a prediction method.
  3. The model folder folder is used to store model configuration files such as model.yaml.
  4. The graph folder is used to store compiled models such as model.pb
  5. The deployment service will automatically load all the models in the model configuration. When a new model configuration is added, the corresponding compilation model in the graph folder will be automatically loaded, so if you need to add it, please copy the corresponding compilation model to the graph path first, then add the model configuration.

Start

  1. Install the python 3.9 environment (with pip)
  2. Install virtualenv pip3 install virtualenv
  3. Create a separate virtual environment for the project:
    virtualenv -p /usr/bin/python3 venv # venv is the name of the virtual environment.
    cd venv/ # venv is the name of the virtual environment.
    source bin/activate # to activate the current virtual environment.
    cd captcha_platform # captcha_platform is the project path.
    
  4. pip install -r requirements.txt
  5. Place your trained model.yaml in model folder, and your model.pb in graph folder (create if not exist)
  6. Deploy as follows.

1. Http Version

  1. Linux Deploy (Linux/Mac):

    Port: 19952

    python tornado_server.py
    
  2. Windows Deploy (Windows):

    python xxx_server.py
    
  3. Request

    Request URIContent-TypePayload TypeMethod
    http://localhost:[Bind-port]/captcha/v1application/jsonJSONPOST
    ParameterRequiredTypeDescription
    imageYesStringBase64 encoding binary stream
    model_nameNoStringModelName, bindable in yaml configuration

    The request is in JSON format, like: {"image": "base64 encoded image binary stream"}

  4. Response

    Parameter NameTypeDescription
    messageStringIdentify results or error messages
    codeStringStatus Code
    successStringWhether to request success

    The return is in JSON format, like: {"message": "xxxx", "code": 0, "success": true}

2. G-RPC Version

Deploy:

python3 grpc_server.py

Port: 50054

Update G-RPC-CODE

python -m grpc_tools.protoc -I. --python_out=. --grpc_python_out=. ./grpc.proto

Directory Structure

- captcha_platform
    - grpc_server.py
    - flask_server.py
    - tornado_server.py
    - sanic_server.py
    - demo.py
    - config.yaml
- model
    - model-1.yaml
    - model-2.yaml
    - ...
- graph
    - Model-1.pb
    - ...

Management Model

  1. Load a model
  1. Unload a model
  1. Update a model

License

This project use SATA License (Star And Thank Author License), so you have to star this project before using. Read the license carefully.

Introduction

https://www.jianshu.com/p/80ef04b16efc

Donate

Thank you very much for your support of my project.