Skip to main content

Library to use Google Lens OCR for free via API used in Chromium on python

Project description

Chrome Lens API for Python

English | Русский

This project provides a Python library and CLI tool for interacting with Google Lens's OCR functionality via the API used in Chromium. This allows you to process images and extract text data, including full text, coordinates, and stitched text using various methods.

Features

  • Extract the full text: Extract the full text from the image.
  • Coordinate Extraction: Extract the text along with its coordinates.
  • Stitched text: Restore text from coordinate blocks using various methods:
    • Old method: Sequential stitching of text.
    • New method: Improved text stitching by calculating them line by line. It is not recommended on rotated texts. Use the past one.
  • Scan images from URLs: Process images directly from URLs without downloading them manually.
  • Cookie Management: Download and manage cookies from a file in Netscape format or directly through the configuration.
  • Proxy Support: Supports HTTP, HTTPS, and SOCKS4/5 proxies to make requests over different networks.

PS: Lens has a problem with the way it displays full text, which is why methods have been added that stitch text from coordinates.

Installation

You can install the package using pip:

From PyPI

pip install chrome-lens-py

Update from PyPI

pip install -U chrome-lens-py

From GIT

pip install git+https://github.com/bropines/chrome-lens-py.git

From source

Clone the repository and install the package:

git clone https://github.com/bropines/chrome-lens-api-py.git
cd chrome-lens-api-py
pip install -r requirements.txt
pip install .

Usage

You can use the lens_scan command from the CLI to process images and extract text data, or you can use the Python API to integrate this functionality into your own projects.

CLI Usage
lens_scan <image_source> <data_type>
  • <image_source>: Path to the image file or URL.
  • <data_type>: Type of data to extract (see below).

Data Types

  • all: Get all data (full text, coordinates, and stitched text using both methods).
  • full_text_default: Get only the default full text.
  • full_text_old_method: Get stitched text using the old sequential method.
  • full_text_new_method: Get stitched text using the new enhanced method.
  • coordinates: Get text along with coordinates.

Examples

To extract text using the new method for stitching from a local file:

lens_scan path/to/image.jpg full_text_new_method

To extract text using the new method for stitching from a URL:

lens_scan https://example.com/image.jpg full_text_new_method

To get all available data from a local file:

lens_scan path/to/image.jpg all

To get all available data from a URL:

lens_scan https://example.com/image.jpg all

CLI Help

You can use the -h or --help option to display usage information:

lens_scan -h
Programmatic API Usage

In addition to the CLI tool, this project provides a Python API that can be used in your scripts.

Basic Programmatic Usage

First, import the LensAPI class:

from chrome_lens_py import LensAPI

Example Programmatic Usage

  1. Instantiate the API:

    api = LensAPI()
    
  2. Process an image:

    • Get all data from a local file:

      result = api.get_all_data('path/to/image.jpg')
      print(result)
      
    • Get all data from a URL:

      result = api.get_all_data('https://example.com/image.jpg')
      print(result)
      
    • Get the default full text from a local file:

      result = api.get_full_text('path/to/image.jpg')
      print(result)
      
    • Get the default full text from a URL:

      result = api.get_full_text('https://example.com/image.jpg')
      print(result)
      
    • Get stitched text using the old method from a local file:

      result = api.get_stitched_text_sequential('path/to/image.jpg')
      print(result)
      
    • Get stitched text using the old method from a URL:

      result = api.get_stitched_text_sequential('https://example.com/image.jpg')
      print(result)
      
    • Get stitched text using the new method from a local file:

      result = api.get_stitched_text_smart('path/to/image.jpg')
      print(result)
      
    • Get stitched text using the new method from a URL:

      result = api.get_stitched_text_smart('https://example.com/image.jpg')
      print(result)
      
    • Get text with coordinates from a local file:

      result = api.get_text_with_coordinates('path/to/image.jpg')
      print(result)
      
    • Get text with coordinates from a URL:

      result = api.get_text_with_coordinates('https://example.com/image.jpg')
      print(result)
      
Cookie Management

This project supports the management of cookies through various methods.

To receive cookies in Netscape format, you can use the following extensions:

  1. Loading Cookies from a Netscape Format File:

    • You can load cookies from a Netscape format file by specifying the file path.

    Programmatic API:

    config = {
        'headers': {
            'cookie': '/path/to/cookie_file.txt'
        }
    }
    api = LensAPI(config=config)
    

    CLI:

    lens_scan path/to/image.jpg all -c /path/to/cookie_file.txt
    
  2. Passing Cookies Directly as a String:

    • You can also pass cookies directly as a string in the configuration or via CLI.

    Programmatic API:

    config = {
        'headers': {
            'cookie': '__Secure-ENID=17.SE=-dizH-; NID=511=---bcDwC4fo0--lgfi0n2-'
        }
    }
    api = LensAPI(config=config)
    

    or

    config = {
        'headers': {
            'cookie': {
                '__Secure-ENID': {
                    'name': '__Secure-ENID',
                    'value': '',
                    'expires': 1756858205,
                },
                'NID': {
                    'name': 'NID',
                    'value': '517=4.......',
                    'expires': 1756858205,
                }
            }
        }
    }
    api = LensAPI(config=config)
    
Proxy Support

You can make requests through a proxy server using the API or CLI. The library supports HTTP, HTTPS, and SOCKS4/5 proxies.

  • Set Proxy in API:

    config = {
        'proxy': 'socks5://127.0.0.1:2080'
    }
    api = LensAPI(config=config)
    
  • Set Proxy in CLI:

    lens_scan path/to/image.jpg all -p socks5://127.0.0.1:2080
    
Programmatic API Methods
  • get_all_data(image_source): Returns all available data for the given image source (file path or URL).
  • get_full_text(image_source): Returns only the full text from the image source.
  • get_text_with_coordinates(image_source): Returns text along with its coordinates in JSON format from the image source.
  • get_stitched_text_smart(image_source): Returns stitched text using the enhanced method from the image source.
  • get_stitched_text_sequential(image_source): Returns stitched text using the basic sequential method from the image source.
Working with Coordinates

In our project, coordinates are used to define the position, size, and rotation of text on an image. Each text region is described by a set of values that help accurately determine where and how to display the text. Here's how these values are interpreted:

  1. Y Coordinate: The first value in the coordinates array represents the vertical position of the top-left corner of the text region on the image. The value is expressed as a fraction of the image's total height, with 0.0 corresponding to the top edge and 1.0 to the bottom.
  2. X Coordinate: The second value indicates the horizontal position of the top-left corner of the text region. The value is expressed as a fraction of the image's total width, where 0.0 corresponds to the left edge and 1.0 to the right.
  3. Width: The third value represents the width of the text region as a fraction of the image's total width. This value determines how much horizontal space the text will occupy.
  4. Height: The fourth value indicates the height of the text region as a fraction of the image's total height.
  5. Fifth Parameter: In the current data, this parameter is always zero and appears to be unused. It might be reserved for future use or specific text modifications.
  6. Sixth Parameter: Specifies the rotation angle of the text region in degrees. Positive values indicate clockwise rotation, while negative values indicate counterclockwise rotation.

Coordinates are measured from the top-left corner of the image. This means that (0.0, 0.0) corresponds to the very top-left corner of the image, while (1.0, 1.0) corresponds to the very bottom-right corner.

Example of Coordinate Usage

For clarity, let's look at the following example of coordinates:

{
    "text": "Sample text",
    "coordinates": [
        0.5,
        0.5,
        0.3,
        0.1,
        0,
        -45
    ]
}

In this example:

  • 0.5 — Y coordinate (50% of the image height, text centered vertically).
  • 0.5 — X coordinate (50% of the image width, text centered horizontally).
  • 0.3 — width of the text region (30% of the image width).
  • 0.1 — height of the text region (10% of the image height).
  • 0 — not used, default value (possibly reserved for future use).
  • -45 — rotation angle of the text counterclockwise by 45 degrees.

These values are used to accurately place, scale, and display the text on the image.

Debugging and Logging

When using the CLI tool lens_scan, you can control the logging level using the --debug flag. There are two levels available:

  • --debug=info: Enables logging of informational messages, which include general information about the processing steps.
  • --debug=debug: Enables detailed debugging messages, including verbose output and the saving of the raw response from the API to a file named response_debug.txt in the current directory.

Example Usage:

  • To run with informational logging:

    lens_scan path/to/image.jpg all --debug=info
    
  • To run with detailed debugging logging:

    lens_scan path/to/image.jpg all --debug=debug
    

When using --debug=debug, the library will save the raw response from the API to response_debug.txt in the current working directory. This can be useful for deep debugging and understanding the exact response from the API.

Programmatic Debugging

When using the API in your Python scripts, you can control the logging level by configuring the logging module and by passing the logging_level parameter when instantiating the LensAPI class.

Example Usage:

import logging
from chrome_lens_py import LensAPI

# Configure logging
logging.basicConfig(level=logging.DEBUG)

# Instantiate the API with the desired logging level
api = LensAPI(logging_level=logging.DEBUG)

# Process an image
result = api.get_all_data('path/to/image.jpg')
print(result)

The logging_level parameter accepts standard logging levels from the logging module, such as logging.INFO, logging.DEBUG, etc.

When the logging level is set to DEBUG, the library will output detailed debugging information and save the raw API response to response_debug.txt in the current directory.

Notes on Logging Levels

  • INFO level: Provides general information about the process, such as when requests are sent and responses are received.
  • DEBUG level: Provides detailed information useful for debugging, including internal state and saved responses.

Project Structure

/chrome-lens-api-py
│
├── /src
│   ├── /chrome_lens_py
│   │   ├── __init__.py           # Package initialization
│   │   ├── constants.py          # Constants used in the project
│   │   ├── utils.py              # Utility functions
│   │   ├── image_processing.py   # Image processing module
│   │   ├── request_handler.py    # API request handling module
│   │   ├── text_processing.py    # Text processing module
│   │   ├── lens_api.py           # API interface for use in other scripts
│   │   └── main.py               # CLI tool entry point
│
├── setup.py                      # Installation setup
├── README.md                     # Project description and usage guide
└── requirements.txt              # Project dependencies

Acknowledgments

Special thanks to dimdenGD for the method of text extraction used in this project. You can check out their work on the chrome-lens-ocr repository. This project is inspired by their approach to leveraging Google Lens OCR functionality.

TODO

  • Add scan by url
  • Move all methods from chrome-lens-ocr
    • cookie!?
  • Do everything beautifully, and not like 400 lines of code, cut into modules by GPT chat
  • Something else very, very important...

License

This project is licensed under the MIT License. See the LICENSE file for more details.

Disclaimer

This project is intended for educational purposes only. The use of Google Lens OCR functionality must comply with Google's Terms of Service. The author of this project is not responsible for any misuse of this software or for any consequences arising from its use. Users are solely responsible for ensuring that their use of this software complies with all applicable laws and regulations.

Author

Bropines - Mail / Telegram

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

chrome_lens_py-1.1.1.tar.gz (18.7 kB view details)

Uploaded Source

Built Distribution

chrome_lens_py-1.1.1-py3-none-any.whl (16.8 kB view details)

Uploaded Python 3

File details

Details for the file chrome_lens_py-1.1.1.tar.gz.

File metadata

  • Download URL: chrome_lens_py-1.1.1.tar.gz
  • Upload date:
  • Size: 18.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/5.1.1 CPython/3.9.20

File hashes

Hashes for chrome_lens_py-1.1.1.tar.gz
Algorithm Hash digest
SHA256 1fa248160c6555dfcef8d9be6f31384c0d34a0cfe30be8b78ce8403db4a67a02
MD5 efc7a05739a533d4adcca94c693e951c
BLAKE2b-256 7a01612662d204f9d7a0aff75abf3c8e11d9bc965eb283fec74a9792dea16d0e

See more details on using hashes here.

File details

Details for the file chrome_lens_py-1.1.1-py3-none-any.whl.

File metadata

File hashes

Hashes for chrome_lens_py-1.1.1-py3-none-any.whl
Algorithm Hash digest
SHA256 b276578d2fab091b2c122ab71586fd7485e09d499c3be716b5c2fe7e0a6b65da
MD5 c49cc3810872160997b7e49f138d3634
BLAKE2b-256 f08449636d1711f45d25def1a31683b85b4aae8f4fc39466621a93ba1b31b04c

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page