ZEBRA: Z-order Curve-based Event Retrieval Approach to Efficiently Explore Automotive Data

04/20/2023
by   Christian Berger, et al.
0

Evaluating the performance of software for automated vehicles is predominantly driven by data collected from the real world. While professional test drivers are supported with technical means to semi-automatically annotate driving maneuvers to allow better event identification, simple data loggers in large vehicle fleets typically lack automatic and detailed event classification and hence, extra effort is needed when post-processing such data. Yet, the data quality from professional test drivers is apparently higher than the one from large fleets where labels are missing, but the non-annotated data set from large vehicle fleets is much more representative for typical, realistic driving scenarios to be handled by automated vehicles. However, while growing the data from large fleets is relatively simple, adding valuable annotations during post-processing has become increasingly expensive. In this paper, we leverage Z-order space-filling curves to systematically reduce data dimensionality while preserving domain-specific data properties, which allows us to explore even large-scale field data sets to spot interesting events orders of magnitude faster than processing time-series data directly. Furthermore, the proposed concept is based on an analytical approach, which preserves explainability for the identified events.

READ FULL TEXT
research
01/12/2023

Unsupervised Driving Event Discovery Based on Vehicle CAN-data

The data collected from a vehicle's Controller Area Network (CAN) can qu...
research
07/19/2019

Analysis and development of an automatic eCall for motorcycles: a one-class cepstrum approach

The automatic dial of an emergency call - eCall - in response to a road ...
research
03/09/2021

Generating Reliable Process Event Streams and Time Series Data based on Neural Networks

Domains such as manufacturing and medicine crave for continuous monitori...
research
03/02/2021

Exploring Imitation Learning for Autonomous Driving with Feedback Synthesizer and Differentiable Rasterization

We present a learning-based planner that aims to robustly drive a vehicl...
research
08/26/2022

ICEBOAT: An Interactive User Behavior Analysis Tool for Automotive User Interfaces

In this work, we present ICEBOAT an interactive tool that enables automo...
research
04/17/2022

Global-Supervised Contrastive Loss and View-Aware-Based Post-Processing for Vehicle Re-Identification

In this paper, we propose a Global-Supervised Contrastive loss and a vie...

Please sign up or login with your details

Forgot password? Click here to reset