Go to:
Logótipo
Você está em: Start > Publications > View > Key Indicators to Assess the Performance of LiDAR-Based Perception Algorithms: A Literature Review
Publication

Key Indicators to Assess the Performance of LiDAR-Based Perception Algorithms: A Literature Review

Title
Key Indicators to Assess the Performance of LiDAR-Based Perception Algorithms: A Literature Review
Type
Another Publication in an International Scientific Journal
Year
2023-10-06
Authors
José Machado da Silva
(Author)
FEUP
View Personal Page You do not have permissions to view the institutional email. Search for Participant Publications View Authenticus page View ORCID page
K. Chiranjeevi
(Author)
FEUP
View Personal Page You do not have permissions to view the institutional email. Search for Participant Publications Without AUTHENTICUS Without ORCID
Correia, M. V.
(Author)
FEUP
View Personal Page You do not have permissions to view the institutional email. Search for Participant Publications View Authenticus page View ORCID page
Journal
Title: IEEE AccessImported from Authenticus Search for Journal Publications
Vol. 11
ISSN: 2169-3536
Publisher: IEEE
Indexing
Publicação em ISI Web of Knowledge ISI Web of Knowledge - 0 Citations
Publicação em Scopus Scopus - 0 Citations
Google Scholar
INSPEC
Other information
Authenticus ID: P-00Z-3DT
Abstract (EN): Perception algorithms are essential for autonomous or semi-autonomous vehicles to perceive the semantics of their surroundings, including object detection, panoptic segmentation, and tracking. Decision-making in case of safety-critical situations, like autonomous emergency braking and collision avoidance, relies on the outputs of these algorithms. This makes it essential to correctly assess such perception systems before their deployment and to monitor their performance when in use. It is difficult to test and validate these systems, particularly at runtime, due to the high-level and complex representations of their outputs. This paper presents an overview of different existing metrics used for the evaluation of LiDAR-based perception systems, emphasizing particularly object detection and tracking algorithms due to their importance in the final perception outcome. Along with generally used metrics, we also discuss the impact of Planning KL-Divergence (PKL), Timed Quality Temporal Logic (TQTL), and Spatio-temporal Quality Logic (STQL) metrics on object detection algorithms. In the case of panoptic segmentation, Panoptic Quality (PQ) and Parsing Covering (PC) metrics are analysed resorting to some pretrained models. Finally, it addresses the application of diverse metrics to evaluate different pretrained models with the respective perception algorithms on publicly available datasets. Besides the identification of the various metrics being proposed, their performance and influence on models are also assessed after conducting new tests or reproducing the experimental results of the reference under consideration.
Language: English
Type (Professor's evaluation): Scientific
No. of pages: 27
Documents
We could not find any documents associated to the publication.
Related Publications

Of the same journal

IEEE ACCESS SPECIAL SECTION EDITORIAL: SOFT COMPUTING TECHNIQUES FOR IMAGE ANALYSIS IN THE MEDICAL INDUSTRY - CURRENT TRENDS, CHALLENGES AND SOLUTIONS (2018)
Another Publication in an International Scientific Journal
D. Jude Hemanth; Lipo Wang; João Manuel R. S. Tavares; Fuqian Shi; Vania Vieira Estrela
From a Visual Scene to a Virtual Representation: A Cross-Domain Review (2023)
Another Publication in an International Scientific Journal
Pereira, A; Pedro Carvalho; Pereira, N; Viana, P; Luís Corte-Real
When Two are Better Than One: Synthesizing Heavily Unbalanced Data (2021)
Article in International Scientific Journal
Ferreira, F; Lourenco, N; Cabral, B; Joao Paulo Fernandes
Visual Trunk Detection Using Transfer Learning and a Deep Learning-Based Coprocessor (2020)
Article in International Scientific Journal
Aguiar, AS; Filipe Neves Santos; Armando Jorge Sousa; Oliveira, PM; Santos, LC
Understanding Overlap in Automatic Root Cause Analysis in Manufacturing Using Causal Inference (2022)
Article in International Scientific Journal
Eduardo E. Oliveira; Vera L. Miguéis; José Luís Moura Borges

See all (76)

Recommend this page Top
Copyright 1996-2024 © Faculdade de Arquitectura da Universidade do Porto  I Terms and Conditions  I Acessibility  I Index A-Z  I Guest Book
Page created on: 2024-08-31 at 01:21:26 | Acceptable Use Policy | Data Protection Policy | Complaint Portal