LGAIJun 1, 2021

Investigation of Uncertainty of Deep Learning-based Object Classification on Radar Spectra

arXiv:2106.05870v16 citations
Originality Synthesis-oriented
AI Analysis

This addresses safety concerns in autonomous vehicles by improving uncertainty quantification for radar perception, but it is incremental as it applies existing calibration methods to a specific domain.

The paper tackled the problem of deep learning-based object classification for automotive radar being overly confident in wrong predictions, which is unsafe for autonomous vehicles, and found that applying state-of-the-art post-hoc uncertainty calibration significantly improved confidence measure quality, partially resolving the over-confidence issue.

Deep learning (DL) has recently attracted increasing interest to improve object type classification for automotive radar.In addition to high accuracy, it is crucial for decision making in autonomous vehicles to evaluate the reliability of the predictions; however, decisions of DL networks are non-transparent. Current DL research has investigated how uncertainties of predictions can be quantified, and in this article, we evaluate the potential of these methods for safe, automotive radar perception. In particular we evaluate how uncertainty quantification can support radar perception under (1) domain shift, (2) corruptions of input signals, and (3) in the presence of unknown objects. We find that in agreement with phenomena observed in the literature,deep radar classifiers are overly confident, even in their wrong predictions. This raises concerns about the use of the confidence values for decision making under uncertainty, as the model fails to notify when it cannot handle an unknown situation. Accurate confidence values would allow optimal integration of multiple information sources, e.g. via sensor fusion. We show that by applying state-of-the-art post-hoc uncertainty calibration, the quality of confidence measures can be significantly improved,thereby partially resolving the over-confidence problem. Our investigation shows that further research into training and calibrating DL networks is necessary and offers great potential for safe automotive object classification with radar sensors.

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