
Jendrik Joerdening and Anthony Navarro on Self-Racing Cars Using Deep Neural Networks
Jendrik Joerdening and Anthony Navarro describe h…
March 16, 201837m 58s
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Show Notes
Jendrik Joerdening and Anthony Navarro describe how a team of 18 Udacity students entered a self-racing car event They had very limited experience of building autonomous control systems for vehicles and had just 6 weeks to do it with only 2 days with the physical car. They describe the architecture, how they co-ordinated a very diverse team, and how they trained the models.
Why listen to this podcast:
- Last year a team of 18 Udacity Self-Driving Cars students competed at the 2017 Self Racing Cars event held at Thunderhill Raceway in California.
- The students had all taken the first term of a three term program on Udacity which covers computer vision and deep learning techniques.
- The team was extremely diverse. They co-ordinated the work via Slack with a team in 9 timezones and 5 different countries.
- The team developed a neural network using Keras and Tensorflow which steered the car based on the input from just one front-facing camera in order to navigate all turns on the racetrack.
- They received a physical car two days before the start of the event.
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