@InProceedings{SantosPireColoPapa:2020:ScChDe,
author = "Santos, Daniel Felipe Silva and Pires, Rafael Gon{\c{c}}alves and
Colombo, Danilo and Papa, Jo{\~a}o Paulo",
affiliation = "{S{\~a}o Paulo State University (UNESP)} and {S{\~a}o Paulo
State University (UNESP)} and {PETROBRAS - BR} and {S{\~a}o Paulo
State University (UNESP)}",
title = "Scene Change Detection Using Multiscale Cascade Residual
Convolutional Neural Networks",
booktitle = "Proceedings...",
year = "2020",
editor = "Musse, Soraia Raupp and Cesar Junior, Roberto Marcondes and
Pelechano, Nuria and Wang, Zhangyang (Atlas)",
organization = "Conference on Graphics, Patterns and Images, 33. (SIBGRAPI)",
publisher = "IEEE Computer Society",
address = "Los Alamitos",
keywords = "change, detection, learning, multiscale.",
abstract = "Scene change detection is an image processing problem related to
partitioning pixels of a digital image into foreground and
background regions. Mostly, visual knowledge-based computer
intelligent systems, like traffic monitoring, video surveillance,
and anomaly detection, need to use change detection techniques.
Amongst the most prominent detection methods, there are the
learning-based ones, which besides sharing similar training and
testing protocols, differ from each other in terms of their
architecture design strategies. Such architecture design directly
impacts on the quality of the detection results, and also in the
device resources capacity, like memory. In this work, we propose a
novel Multiscale Cascade Residual Convolutional Neural Network
that integrates multiscale processing strategy through a Residual
Processing Module, with a Segmentation Convolutional Neural
Network. Experiments conducted on two different datasets support
the effectiveness of the proposed approach, achieving average
overall F -measure results of 0.9622 and 0.9664 over Change
Detection 2014 and PetrobrasROUTES datasets respectively, besides
comprising approximately eight times fewer parameters. Such
obtained results place the proposed technique amongst the top four
state-of-the-art scene change detection methods.",
conference-location = "Porto de Galinhas (virtual)",
conference-year = "7-10 Nov. 2020",
doi = "10.1109/SIBGRAPI51738.2020.00023",
url = "http://dx.doi.org/10.1109/SIBGRAPI51738.2020.00023",
language = "en",
ibi = "8JMKD3MGPEW34M/438DG35",
url = "http://urlib.net/ibi/8JMKD3MGPEW34M/438DG35",
targetfile = "71.pdf",
urlaccessdate = "2025, Mar. 21"
}