Visualizing and interpreting a deep neural network for classification of vehicular orientation
Du, Jianlin
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https://hdl.handle.net/2142/99989
Description
Title
Visualizing and interpreting a deep neural network for classification of vehicular orientation
Author(s)
Du, Jianlin
Contributor(s)
Varshney, Lav R.
Issue Date
2018-05
Keyword(s)
Deep learning
Abstract
We trained a deep neural network to classify images of cars facing 36 different directions, on a 2D image
dataset rendered from 3D car models. After achieving a validation accuracy of 98.23%, we applied a
series of interpretation techniques, including semantic dictionary, spatial attribution, and channel
attribution, to the trained model, which enable us gain important insights on how the model recognized
a car’s direction. For example, the channel attribution technique reveals in a certain layer, which filters
contribute the most to distinguish a front facing car from a right facing car. Moreover, there are
interactive interfaces for all the experiments, and readers could explore the interpretation of the model
in a notebook environment.
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