Behavioral event detection and rate estimation for autonomous vehicle evaluation

05/17/2023
by   Maria A. Terres, et al.
0

Autonomous vehicles are continually increasing their presence on public roads. However, before any new autonomous driving software can be approved, it must first undergo a rigorous assessment of driving quality. These quality evaluations typically focus on estimating the frequency of (undesirable) behavioral events. While rate estimation would be straight-forward with complete data, in the autonomous driving setting this estimation is greatly complicated by the fact that detecting these events within large driving logs is a non-trivial task that often involves human reviewers. In this paper we outline a streaming partial tiered event review configuration that ensures both high recall and high precision on the events of interest. In addition, the framework allows for valid streaming estimates at any phase of the data collection process, even when labels are incomplete, for which we develop the maximum likelihood estimate and show it is unbiased. Constructing honest and effective confidence intervals (CI) for these rate estimates, particularly for rare safety-critical events, is a novel and challenging statistical problem due to the complexity of the data likelihood. We develop and compare several CI approximations, including a novel Gamma CI method that approximates the exact but intractable distribution with a weighted sum of independent Poisson random variables. There is a clear trade-off between statistical coverage and interval width across the different CI methods, and the extent of this trade-off varies depending on the specific application settings (e.g., rare vs. common events). In particular, we argue that our proposed CI method is the best-suited when estimating the rate of safety-critical events where guaranteed coverage of the true parameter value is a prerequisite to safely launching a new ADS on public roads.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/24/2020

Neural Bridge Sampling for Evaluating Safety-Critical Autonomous Systems

Learning-based methodologies increasingly find applications in safety-cr...
research
06/15/2023

Sim-on-Wheels: Physical World in the Loop Simulation for Self-Driving

We present Sim-on-Wheels, a safe, realistic, and vehicle-in-loop framewo...
research
07/06/2022

"Curse of rarity" for autonomous vehicles

Achieving the human-level safety performance for autonomous vehicles (AV...
research
03/02/2020

Learning to Collide: An Adaptive Safety-Critical Scenarios Generating Method

Long-tail and rare event problems become crucial when autonomous driving...
research
05/29/2020

Reducing DNN Labelling Cost using Surprise Adequacy: An Industrial Case Study for Autonomous Driving

Deep Neural Networks (DNNs) are rapidly being adopted by the automotive ...
research
03/16/2023

Limit setting using spacings in the presence of unknown backgrounds

Finding upper limits on the rate of events from a proposed process in th...
research
07/01/2021

Testing a Battery Management System via Criticality-based Rare Event Simulation

For the validation of safety-critical systems regarding safety and comfo...

Please sign up or login with your details

Forgot password? Click here to reset