/P5_Vehicle_Detection

#MachineLearning #HOG #SVM #OpenCV

Primary LanguageJupyter NotebookMIT LicenseMIT

Vehicle Detection

Udacity - Self-Driving Car NanoDegree

Link to final video output:

Here's a link to my video result:

IMAGE ALT TEXT HERE

Description: software pipeline to detect vehicles in a video.

  • 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 HOG feature vector.
  • Note: for those first two steps normalize features and randomize a selection for training and testing.
  • Implement a sliding-window technique and use trained classifier to search for vehicles in images.
  • Run the pipeline on a video stream (start with the test_video.mp4 and later implement on full project_video.mp4) 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.

Here are links to the labeled data for vehicle and non-vehicle examples to train your classifier. These example images come from a combination of the GTI vehicle image database, the KITTI vision benchmark suite, and examples extracted from the project video itself. You are welcome and encouraged to take advantage of the recently released Udacity labeled dataset to augment your training data.