Efficient Out-of-Distribution Detection Using Latent Space of $\beta$-VAE for Cyber-Physical Systems
Shreyas Ramakrishna, Zahra Rahiminasab, Gabor Karsai, Arvind Easwaran,, Abhishek Dubey

TL;DR
This paper proposes a novel $eta$-VAE based method for efficient out-of-distribution detection in cyber-physical systems, capable of identifying OOD conditions and their features with low computational cost.
Contribution
The paper introduces a single $eta$-VAE model with a partially disentangled latent space for OOD detection and feature identification, reducing complexity compared to multi-classifier approaches.
Findings
Effective OOD detection in simulated autonomous driving scenarios
Ability to identify features responsible for OOD conditions
Low computational overhead suitable for resource-constrained CPS
Abstract
Deep Neural Networks are actively being used in the design of autonomous Cyber-Physical Systems (CPSs). The advantage of these models is their ability to handle high-dimensional state-space and learn compact surrogate representations of the operational state spaces. However, the problem is that the sampled observations used for training the model may never cover the entire state space of the physical environment, and as a result, the system will likely operate in conditions that do not belong to the training distribution. These conditions that do not belong to training distribution are referred to as Out-of-Distribution (OOD). Detecting OOD conditions at runtime is critical for the safety of CPS. In addition, it is also desirable to identify the context or the feature(s) that are the source of OOD to select an appropriate control action to mitigate the consequences that may arise…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Fault Detection and Control Systems · Adversarial Robustness in Machine Learning
MethodsEntropy Regularization · Proximal Policy Optimization · CARLA: An Open Urban Driving Simulator
