Siamese Networks for Online Map Validation in Autonomous Driving
IV 2020 Workshop on Online Map Validation
autonomous-driving
map-validation
A deep learning classifier based on Siamese Network architecture for validating HD map data against live sensor readings. Reaches an F1 score of 89.1%.

Abstract
The work addresses map validation in autonomous vehicles by comparing map data against sensor readings using a deep learning classifier based on Siamese Network architecture. The approach reaches an F1 score of 89.1%, whereby misclassified scenes mostly stem from the limited variability in the training data.
Related
Citation
BibTeX citation:
@inproceedings{drost2020,
author = {Drost, Felix and Parolini, Luca and Schneider, Sebastian},
title = {Siamese {Networks} for {Online} {Map} {Validation} in
{Autonomous} {Driving}},
booktitle = {First Workshop on Online Map Validation and Road Model
Creation, IEEE Intelligent Vehicles Symposium (IV)},
date = {2020-10-01},
url = {https://lucaparolini.com/publications/papers/siamese-map-validation-2020/},
doi = {10.1109/iv47402.2020.9304642},
langid = {en}
}
For attribution, please cite this work as:
F.
Drost, L. Parolini, and S. Schneider, “Siamese Networks for Online
Map Validation in Autonomous Driving,” in First Workshop on
Online Map Validation and Road Model Creation, IEEE Intelligent Vehicles
Symposium (IV), Oct. 2020. doi: 10.1109/iv47402.2020.9304642.