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Article
Pedestrian attribute recognition using two-branch trainable Gabor wavelets network
PLoS ONE
  • Imran N. Junejo, Zayed University
ORCID Identifiers

0000-0002-7745-7952

Document Type
Article
Publication Date
6-1-2021
Abstract

Keeping an eye on pedestrians as they navigate through a scene, surveillance cameras are everywhere. With this context, our paper addresses the problem of pedestrian attribute recognition (PAR). This problem entails recognizing attributes such as age-group, clothing style, accessories, footwear style etc. This multi-label problem is extremely challenging even for human observers and has rightly garnered attention from the computer vision community. Towards a solution to this problem, in this paper, we adopt trainable Gabor wavelets (TGW) layers and cascade them with a convolution neural network (CNN). Whereas other researchers are using fixed Gabor filters with the CNN, the proposed layers are learnable and adapt to the dataset for a better recognition. We propose a two-branch neural network where mixed layers, a combination of the TGW and convolutional layers, make up the building block of our deep neural network. We test our method on twoo challenging publicly available datasets and compare our results with state of the art.

Publisher
Public Library of Science (PLoS)
Disciplines
Scopus ID

85106966851

Creative Commons License
Creative Commons Attribution 4.0 International
Indexed in Scopus
Yes
Open Access
Yes
Open Access Type
Gold: This publication is openly available in an open access journal/series
Citation Information
Imran N. Junejo. "Pedestrian attribute recognition using two-branch trainable Gabor wavelets network" PLoS ONE Vol. 16 Iss. 6 June (2021)
Available at: http://works.bepress.com/imran-junejo/2/