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YUCHONG YE
This project is inspired by the paper "End to End Learning for Self Driving Cars" from Nvidia. In this project, a multilayer CNN is trained to predict the steering angel of the self driving car based on its camera image. The speed of the car is control by a PID controller.
Image data are collected by three front view cameras. To augment the data, some strategies are used:
1. Flip each image and take the opposite sign of the steering measurement.

2. Use the images taken from all three cameras. For the left and right cameras, a certain angle is subtracted or added to its corresponding measurement.
3. Crop the input image so that only lower portion is kept, which contains more useful information.


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