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Computer Vision - Pattern Recognition.

Probable Tech Stack / Analytics Models and Algorithms , being used :-

  • ANN - Artificial Neural Networks

  • Open_CV

  • DLIB

  • TENSORFLOW

  • OPENFACE - Face recognition library OPENFACE - Licensing

  • AZURE - revoscalepy , face-api etc.

  • LOGISTIC REGRESSION - Sigmoid or Binomial Logistic Regression . Classify Response variable into - TWO classes.

  • SOFTMAX REGRESSION - Multinominal Logistic Regression. Classify Response variable into - more than TWO classes.

    • The SOFTMAX is a generalization of the SIGMOID - as it can be used for any incident of - more than TWO classes of the Dependent variable.
    • The Classes of DEPENDENT variable need to be mutually exclusive with No Overlap.
    • Further reading - Softmax - GeeksforGeeks.org
    • Softmax - ufldl.stanford.edu/wiki

Computer Vision with OpenCV and DLIB

Initial experiments mostly with curated code from OpenCV and DLIB examples .

DISCLAIMER -- None of this code or examples are related to any client engagement.

Pedestrian Detection

According to Navneet Dalal - REFER SOURCE - Histogram of Oriented Gradients (HOG) for Object Detection -- Navneet DALAL , Bill TRIGGS and Cordelia SCHMID.

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