Threat Detection in X-Ray

Implement Machine Learning Model for Threat Detection in X-ray Images

Overview:

Our customer, who specializes in security baggage scanners and physical security, has a set of baggage scanner machines deployed at strategically important locations. They want an improved machine learning model that can detect threat objects like knives, scissors, and guns in x-ray images.

Challenges:

  • Understanding the setup of the framework (Alexey Darknet) needed to train the YOLO model.
  • Understanding the methods needed to create a perfect dataset for training such a model.
  • Validation and testing of models.

Development of a C# API for threat detection using the trained model.

Solutions:

  • We developed the YOLO model and its corresponding API, which helps to detect threats using trained models.

Our solution consists of:

  • A trained model with good accuracy for threat detection in x-ray images.
  • A C# API that aids in threat detection.
  • A demo test application to evaluate the model on images.

Outcome:

Our solution helped our client introduce a new threat detection feature with the help of a trained YOLO threat detection model.

Technical knowledge and understanding:

  • Understanding of the YOLO model and Alexey Darknet.
  • Understanding of CUDA version and its dependencies when building Alexey Darknet.
  • Understanding of model validation and OpenCV library.

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