Model Uncertainty Quantification for Reliable Deep Vision Structural Health Monitoring

04/10/2020
by   Seyed Omid Sajedi, et al.
6

Computer vision leveraging deep learning has achieved significant success in the last decade. Despite the promising performance of the existing deep models in the recent literature, the extent of models' reliability remains unknown. Structural health monitoring (SHM) is a crucial task for the safety and sustainability of structures, and thus prediction mistakes can have fatal outcomes. This paper proposes Bayesian inference for deep vision SHM models where uncertainty can be quantified using the Monte Carlo dropout sampling. Three independent case studies for cracks, local damage identification, and bridge component detection are investigated using Bayesian inference. Aside from better prediction results, mean class softmax variance and entropy, the two uncertainty metrics, are shown to have good correlations with misclassifications. While the uncertainty metrics can be used to trigger human intervention and potentially improve prediction results, interpretation of uncertainty masks can be challenging. Therefore, surrogate models are introduced to take the uncertainty as input such that the performance can be further boosted. The proposed methodology in this paper can be applied to future deep vision SHM frameworks to incorporate model uncertainty in the inspection processes.

READ FULL TEXT

page 4

page 6

page 8

page 9

page 10

page 12

research
09/17/2019

Learn to Estimate Labels Uncertainty for Quality Assurance

Deep Learning sets the state-of-the-art in many challenging tasks showin...
research
12/08/2018

Sampling-based Bayesian Inference with gradient uncertainty

Deep neural networks(NNs) have achieved impressive performance, often ex...
research
08/02/2019

Uncertainty Quantification in Computer-Aided Diagnosis: Make Your Model say "I don't know" for Ambiguous Cases

We evaluate two different methods for the integration of prediction unce...
research
04/17/2021

Bayesian graph convolutional neural networks via tempered MCMC

Deep learning models, such as convolutional neural networks, have long b...
research
07/09/2021

Gradient-Based Quantification of Epistemic Uncertainty for Deep Object Detectors

Reliable epistemic uncertainty estimation is an essential component for ...
research
02/14/2023

B-BACN: Bayesian Boundary-Aware Convolutional Network for Crack Characterization

The accurate detection of crack boundaries is crucial for various purpos...
research
02/21/2021

Uncertainty-Aware Deep Learning for Autonomous Safe Landing Site Selection

Hazard detection is critical for enabling autonomous landing on planetar...

Please sign up or login with your details

Forgot password? Click here to reset