DUDES: Deep Uncertainty Distillation using Ensembles for Semantic Segmentation

03/17/2023
by   Steven Landgraf, et al.
0

Deep neural networks lack interpretability and tend to be overconfident, which poses a serious problem in safety-critical applications like autonomous driving, medical imaging, or machine vision tasks with high demands on reliability. Quantifying the predictive uncertainty is a promising endeavour to open up the use of deep neural networks for such applications. Unfortunately, current available methods are computationally expensive. In this work, we present a novel approach for efficient and reliable uncertainty estimation which we call Deep Uncertainty Distillation using Ensembles for Segmentation (DUDES). DUDES applies student-teacher distillation with a Deep Ensemble to accurately approximate predictive uncertainties with a single forward pass while maintaining simplicity and adaptability. Experimentally, DUDES accurately captures predictive uncertainties without sacrificing performance on the segmentation task and indicates impressive capabilities of identifying wrongly classified pixels and out-of-domain samples on the Cityscapes dataset. With DUDES, we manage to simultaneously simplify and outperform previous work on Deep Ensemble-based Uncertainty Distillation.

READ FULL TEXT

page 1

page 3

page 6

research
07/19/2023

U-CE: Uncertainty-aware Cross-Entropy for Semantic Segmentation

Deep neural networks have shown exceptional performance in various tasks...
research
02/26/2020

A general framework for ensemble distribution distillation

Ensembles of neural networks have been shown to give better performance ...
research
03/15/2022

Self-Distribution Distillation: Efficient Uncertainty Estimation

Deep learning is increasingly being applied in safety-critical domains. ...
research
09/20/2023

You can have your ensemble and run it too – Deep Ensembles Spread Over Time

Ensembles of independently trained deep neural networks yield uncertaint...
research
10/05/2020

Multi-Loss Sub-Ensembles for Accurate Classification with Uncertainty Estimation

Deep neural networks (DNNs) have made a revolution in numerous fields du...
research
07/31/2020

Learning the Distribution: A Unified Distillation Paradigm for Fast Uncertainty Estimation in Computer Vision

Calibrated estimates of uncertainty are critical for many real-world com...
research
05/17/2023

Logit-Based Ensemble Distribution Distillation for Robust Autoregressive Sequence Uncertainties

Efficiently and reliably estimating uncertainty is an important objectiv...

Please sign up or login with your details

Forgot password? Click here to reset