Applied Sciences (Oct 2021)

Autoencoder-Based Semantic Novelty Detection: Towards Dependable AI-Based Systems

  • Andreas Rausch,
  • Azarmidokht Motamedi Sedeh,
  • Meng Zhang

DOI
https://doi.org/10.3390/app11219881
Journal volume & issue
Vol. 11, no. 21
p. 9881

Abstract

Read online

Many autonomous systems, such as driverless taxis, perform safety-critical functions. Autonomous systems employ artificial intelligence (AI) techniques, specifically for environmental perception. Engineers cannot completely test or formally verify AI-based autonomous systems. The accuracy of AI-based systems depends on the quality of training data. Thus, novelty detection, that is, identifying data that differ in some respect from the data used for training, becomes a safety measure for system development and operation. In this study, we propose a new architecture for autoencoder-based semantic novelty detection with two innovations: architectural guidelines for a semantic autoencoder topology and a semantic error calculation as novelty criteria. We demonstrate that such a semantic novelty detection outperforms autoencoder-based novelty detection approaches known from the literature by minimizing false negatives.

Keywords