Hierarchical Multi-task Deep Neural Network Architecture for End-to-End Driving
A novel hierarchical Deep Neural Network (DNN) model is presented to address the task of end-to-end driving. The model consists of a master classifier network which determines the driving task required from an input stereo image and directs said image to one of a set of subservient network regressio...
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Zusammenfassung: | A novel hierarchical Deep Neural Network (DNN) model is presented to address
the task of end-to-end driving. The model consists of a master classifier
network which determines the driving task required from an input stereo image
and directs said image to one of a set of subservient network regression models
that perform inference and output a steering command. These subservient
networks are designed and trained for a specific driving task: straightaway,
swerve maneuver, tight turn, gradual turn, and chicane. Using this modular
network strategy allows for two primary advantages: an overall reduction in the
amount of data required to train the complete system, and for model tailoring
where more complex models can be used for more challenging tasks while
simplified networks can handle more mundane tasks. It is this latter facet of
the model that makes the approach attractive to a number of applications beyond
the current vehicle steering strategy. |
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DOI: | 10.48550/arxiv.1902.03466 |