On Efficient Uncertainty Estimation for Resource-Constrained Mobile
Applications
- URL: http://arxiv.org/abs/2111.09838v1
- Date: Thu, 11 Nov 2021 22:24:15 GMT
- Title: On Efficient Uncertainty Estimation for Resource-Constrained Mobile
Applications
- Authors: Johanna Rock, Tiago Azevedo, Ren\'e de Jong, Daniel Ruiz-Mu\~noz,
Partha Maji
- Abstract summary: Predictive uncertainty supplements model predictions and enables improved functionality of downstream tasks.
We tackle this problem by building upon Monte Carlo Dropout (MCDO) models using the Axolotl framework.
We conduct experiments on (1) a multi-class classification task using the CIFAR10 dataset, and (2) a more complex human body segmentation task.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Deep neural networks have shown great success in prediction quality while
reliable and robust uncertainty estimation remains a challenge. Predictive
uncertainty supplements model predictions and enables improved functionality of
downstream tasks including embedded and mobile applications, such as virtual
reality, augmented reality, sensor fusion, and perception. These applications
often require a compromise in complexity to obtain uncertainty estimates due to
very limited memory and compute resources. We tackle this problem by building
upon Monte Carlo Dropout (MCDO) models using the Axolotl framework;
specifically, we diversify sampled subnetworks, leverage dropout patterns, and
use a branching technique to improve predictive performance while maintaining
fast computations. We conduct experiments on (1) a multi-class classification
task using the CIFAR10 dataset, and (2) a more complex human body segmentation
task. Our results show the effectiveness of our approach by reaching close to
Deep Ensemble prediction quality and uncertainty estimation, while still
achieving faster inference on resource-limited mobile platforms.
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