Skip to main content

A deeplearning package for the basegun weapon recognition app

Project description

Project description

Basegun_ml is a deeplearning package for the basegun weapon recongition app.

Installation

pip install basegun-ml

Usage

Classification

Gun Mechanism Classification: This feature categorizes an image into a list of families representing different firearm mechanisms. The classification is based on descriptive, objective criteria that are independent of legal classification.

from basegun_ml.classification import get_typology, list_typologies
#After the import the model is already warmed-up for faster inference

#Convert image to bytes
with open("test.jpg", "rb") as file:
    image_bytes = file.read()

#Prediction of the weapon typology
typology,confidence_score,confidence_level=get_typology(image_bytes)

#Obtain the list of the different typologies
list_typologies()

Variables description

  • typology: it corresponds to the weapon class predicted from the image. The list of typologies can be obtained from the function
  • confidence_score: it corresponds to the confidence of the class prediction of the algorithm, the closer to 1 to more confident is the prediction
  • confidence_level: there are 3 level of confidence defined. According to this performance level the basegun user will have more information.

    Measure length

    Measure Length Module: Measuring the overall length of a firearm or its barrel length is crucial for its legal classification. In France, the classification of long guns depends on these measurements. This module measures these lengths using an image.

    from basegun_ml.measure import get_lengths
    
    #Convert image to bytes
    with open("test.jpg", "rb") as file:
        image_bytes = file.read()
    
    #Get lengths
    weapon_length,barrel_length,confidence_card=get_lengths(image_bytes)
    

    Variables description

  • weapon_length: it corresponds to the weapon overall length predicted from the image.
  • barrel_length: it corresponds to the barrel length of the weapon predicted from the image.
  • confidence_card: it corresponds to the confidence score for the card prediction. A card is used as a reference for the measure module
  • If the gun is not detected, the exception MissingGun is raised
  • If the card is not detected, the exception MissingCard is raised

    Alarm Model detection

    Alarm Gun Recognition: An alarm gun is a type of blank gun recognized as an alarm by French legislation. These guns are considered impossible to modify to make them lethal. The associated algorithm detects alarm guns using markings on the weapon.

    from basegun_ml.ocr import is_alarm_weapon
    #After the import the model is already warmed-up for faster inference
    
    #Convert image to bytes
    with open("test.jpg", "rb") as file:
        image_bytes = file.read()
    
    #Prediction of the weapon typology
    alarm_model = is_alarm_weapon(image_bytes, quality_check=True )
    

    Variables description

  • alarm_model if the gun is one of the alarm model it returns "Alarm_model". If the gun has the PAK marking then alarm_model returns "PAK" else it return "Not_alarm"
  • quality_check specify if the quality analysis is run before the text detection
  • If the image quality is too low, the exception LowQuality is raised
  • If no text is detected, the exception MissingText is raised

    Tests

    Tests are available for the classification task and the measure length task

    pytest tests/test_classification.py 
    pytest tests/test_measure.py
    pytest tests/test_OCR.py
    

    Credits

  • 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

    basegun_ml-2.0.5.tar.gz (39.5 MB view details)

    Uploaded Source

    Built Distribution

    basegun_ml-2.0.5-py3-none-any.whl (39.5 MB view details)

    Uploaded Python 3

    File details

    Details for the file basegun_ml-2.0.5.tar.gz.

    File metadata

    • Download URL: basegun_ml-2.0.5.tar.gz
    • Upload date:
    • Size: 39.5 MB
    • Tags: Source
    • Uploaded using Trusted Publishing? No
    • Uploaded via: twine/5.1.1 CPython/3.12.5

    File hashes

    Hashes for basegun_ml-2.0.5.tar.gz
    Algorithm Hash digest
    SHA256 592c530a59d3c22e2b03ac41290877aad856233c5eac1fb83b429333f6ad84b5
    MD5 3e4fa481f0600c60a92a9a05386498d9
    BLAKE2b-256 2ae0ca048a5e174b3cf4fcf25965780e9b60b3ea5abf87b210c797321a2df4d1

    See more details on using hashes here.

    File details

    Details for the file basegun_ml-2.0.5-py3-none-any.whl.

    File metadata

    • Download URL: basegun_ml-2.0.5-py3-none-any.whl
    • Upload date:
    • Size: 39.5 MB
    • Tags: Python 3
    • Uploaded using Trusted Publishing? No
    • Uploaded via: twine/5.1.1 CPython/3.12.5

    File hashes

    Hashes for basegun_ml-2.0.5-py3-none-any.whl
    Algorithm Hash digest
    SHA256 e9d17cb199f2649ab07ca2e901659ac154c790fc5e3fdf1399ecf57b223936e1
    MD5 d3d9d9720c728a42d47021401cd1a327
    BLAKE2b-256 7997c47f39dce87af1a88af110a752283ed8f446b87d13f54e7b85d3da531b19

    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