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Creating and testing Nvidia's End-to-End CNN model agains traditional computer vision practices to compare performace difference and generalisation of the models.

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Haard-Shah/Self-Driving-Car-Deep-Learning

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Self-Driving-Car-Deep-Learning

Creating and testing Nvidia's End-to-End CNN model agains traditional computer vision practices to compare performace differences and generalisation of the models.

Demo

Demonstration of the model in practice can be found right here: https://www.youtube.com/watch?v=DaUzsRCO_1M

Results

The Deep Learning based on the Nvidia's End-to-End CNN model performed the best out of the three algorithm's tested achieving a 96% accuracy score on validation set. The models learned to generalised enough to drive on roads without significant lane markings as well.

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Creating and testing Nvidia's End-to-End CNN model agains traditional computer vision practices to compare performace difference and generalisation of the models.

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