DBNet
Driver behavior predictor
Provides data and tools for machine learning models to predict driving behaviors from sensor data.
DBNet: A Large-Scale Dataset for Driving Behavior Learning, CVPR 2018
215 stars
16 watching
50 forks
Language: Python
last commit: over 6 years ago
Linked from 1 awesome list
autonomous-drivingbenchmarkcvpr2018dbnetdriving-behaviorpoint-cloudsteering-wheelvehicle-speed
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