Hyperparameters optimization for Deep Learning based emotion prediction
for Human Robot Interaction
- URL: http://arxiv.org/abs/2001.03855v1
- Date: Sun, 12 Jan 2020 05:25:02 GMT
- Title: Hyperparameters optimization for Deep Learning based emotion prediction
for Human Robot Interaction
- Authors: Shruti Jaiswal, and Gora Chand Nandi
- Abstract summary: We have proposed an Inception module based Convolutional Neural Network Architecture.
The model is implemented in a humanoid robot, NAO in real time and robustness of the model is evaluated.
- Score: 0.2549905572365809
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: To enable humanoid robots to share our social space we need to develop
technology for easy interaction with the robots using multiple modes such as
speech, gestures and share our emotions with them. We have targeted this
research towards addressing the core issue of emotion recognition problem which
would require less computation resources and much lesser number of network
hyperparameters which will be more adaptive to be computed on low resourced
social robots for real time communication. More specifically, here we have
proposed an Inception module based Convolutional Neural Network Architecture
which has achieved improved accuracy of upto 6% improvement over the existing
network architecture for emotion classification when combinedly tested over
multiple datasets when tried over humanoid robots in real - time. Our proposed
model is reducing the trainable Hyperparameters to an extent of 94% as compared
to vanilla CNN model which clearly indicates that it can be used in real time
based application such as human robot interaction. Rigorous experiments have
been performed to validate our methodology which is sufficiently robust and
could achieve high level of accuracy. Finally, the model is implemented in a
humanoid robot, NAO in real time and robustness of the model is evaluated.
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