cris.boxmetadata.label.title
A New Microscopic Approach to Traffic Flow Classification Using a Convolutional Neural Network Object Detector and a Multi-Tracker Algorithm
cris.boxmetadata.label.dateissued
01 browse.startsWith.months.april 2022
cris.boxmetadata.label.accesslevel
metadata only access
cris.boxmetadata.label.resourcetype
journal article
cris.boxmetadata.label.authors
Federal University of Espirito Santo
cris.boxmetadata.label.publisher
Institute of Electrical and Electronics Engineers Inc.
cris.boxmetadata.label.abstract
Traffic congestion is a significant issue in urban areas and can cause adverse effects. In this paper, our proposal categorizes the traffic activity from video through three steps: vehicle monitoring, feature extraction, and classification. The vehicle monitoring step comprises an object detector based on a convolutional neural network and multi-object tracker. The feature extraction step uses information related to each detected vehicle, in various points of the road, to represent the traffic condition through three features: density, flow, and velocity. We tested on the UCSD dataset and achieved the best performance with 98.82% of accuracy, which outperformed the state-of-the-art methods.
cris.boxmetadata.label.citationstartpage
3797
cris.boxmetadata.label.citationendpage
3801
cris.boxmetadata.label.volume
23
cris.boxmetadata.label.issue
4
cris.boxmetadata.label.language
English
cris.boxmetadata.label.ocdeknowledgeArea
Ingeniería eléctrica, Ingeniería electrónica
cris.boxmetadata.label.subjects
cris.boxmetadata.label.doi
cris.boxmetadata.label.scopusidentifier
2-s2.0-85097923518
cris.boxmetadata.label.source
IEEE Transactions on Intelligent Transportation Systems
cris.boxmetadata.label.containerissn
15249050
peru-layout.shadow-copies
Directorio de Producción Científica
Scopus