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CarND-Vehicle-Detection

Computer vision techniques to detect vehicles

The steps of the study include:

  • Perform a Histogram of Oriented Gradients (HOG) feature extraction on a labeled training set of images and train a classifier Linear SVM classifier.
  • Apply a color transform and append binned color features, as well as histograms of color, to the HOG feature vector.
  • Normalize the features and randomize a selection for training and testing.
  • Implement a sliding-window technique and use the trained classifier to search for vehicles in images.
  • Run the software pipeline on a video stream and create a heat map of recurring detections frame by frame to reject outliers and follow detected vehicles.
  • Estimate a bounding box for vehicles detected.

See the report for details.