Deep supervised hashing for gait retrieval [version 1; peer review: 1 approved, 1 approved with reservations]

Background: Gait recognition is perceived as the most promising biometric approach for future decades especially because of its efficient applicability in surveillance systems. Due to recent growth in the use of gait biometrics across surveillance systems, the ability to rapidly search for the requi...

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Published inF1000 research Vol. 10; p. 1038
Main Authors Sayeed, Shohel, Min, Pa Pa, Ong, Thian Song
Format Journal Article
LanguageEnglish
Published 2021
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ISSN2046-1402
2046-1402
DOI10.12688/f1000research.51368.1

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Abstract Background: Gait recognition is perceived as the most promising biometric approach for future decades especially because of its efficient applicability in surveillance systems. Due to recent growth in the use of gait biometrics across surveillance systems, the ability to rapidly search for the required data has become an emerging need. Therefore, we addressed the gait retrieval problem, which retrieves people with gaits similar to a query subject from a large-scale dataset. Methods: This paper presents the deep gait retrieval hashing (DGRH) model to address the gait retrieval problem for large-scale datasets. Our proposed method is based on a supervised hashing method with a deep convolutional network. We use the ability of the convolutional neural network (CNN) to capture the semantic gait features for feature representation and learn the compact hash codes with the compatible hash function. Therefore, our DGRH model combines gait feature learning with binary hash codes. In addition, the learning loss is designed with a classification loss function that learns to preserve similarity and a quantization loss function that controls the quality of the hash codes Results: The proposed method was evaluated against the CASIA-B, OUISIR-LP, and OUISIR-MVLP benchmark datasets and received the promising result for gait retrieval tasks. Conclusions: The end-to-end deep supervised hashing model is able to learn discriminative gait features and is efficient in terms of the storage memory and speed for gait retrieval.
AbstractList Background: Gait recognition is perceived as the most promising biometric approach for future decades especially because of its efficient applicability in surveillance systems. Due to recent growth in the use of gait biometrics across surveillance systems, the ability to rapidly search for the required data has become an emerging need. Therefore, we addressed the gait retrieval problem, which retrieves people with gaits similar to a query subject from a large-scale dataset. Methods: This paper presents the deep gait retrieval hashing (DGRH) model to address the gait retrieval problem for large-scale datasets. Our proposed method is based on a supervised hashing method with a deep convolutional network. We use the ability of the convolutional neural network (CNN) to capture the semantic gait features for feature representation and learn the compact hash codes with the compatible hash function. Therefore, our DGRH model combines gait feature learning with binary hash codes. In addition, the learning loss is designed with a classification loss function that learns to preserve similarity and a quantization loss function that controls the quality of the hash codes Results: The proposed method was evaluated against the CASIA-B, OUISIR-LP, and OUISIR-MVLP benchmark datasets and received the promising result for gait retrieval tasks. Conclusions: The end-to-end deep supervised hashing model is able to learn discriminative gait features and is efficient in terms of the storage memory and speed for gait retrieval.
Background: Gait recognition is perceived as the most promising biometric approach for future decades especially because of its efficient applicability in surveillance systems. Due to recent growth in the use of gait biometrics across surveillance systems, the ability to rapidly search for the required data has become an emerging need. Therefore, we addressed the gait retrieval problem, which retrieves people with gaits similar to a query subject from a large-scale dataset. Methods: This paper presents the deep gait retrieval hashing (DGRH) model to address the gait retrieval problem for large-scale datasets. Our proposed method is based on a supervised hashing method with a deep convolutional network. We use the ability of the convolutional neural network (CNN) to capture the semantic gait features for feature representation and learn the compact hash codes with the compatible hash function. Therefore, our DGRH model combines gait feature learning with binary hash codes. In addition, the learning loss is designed with a classification loss function that learns to preserve similarity and a quantization loss function that controls the quality of the hash codes Results: The proposed method was evaluated against the CASIA-B, OUISIR-LP, and OUISIR-MVLP benchmark datasets and received the promising result for gait retrieval tasks. Conclusions: The end-to-end deep supervised hashing model is able to learn discriminative gait features and is efficient in terms of the storage memory and speed for gait retrieval.Background: Gait recognition is perceived as the most promising biometric approach for future decades especially because of its efficient applicability in surveillance systems. Due to recent growth in the use of gait biometrics across surveillance systems, the ability to rapidly search for the required data has become an emerging need. Therefore, we addressed the gait retrieval problem, which retrieves people with gaits similar to a query subject from a large-scale dataset. Methods: This paper presents the deep gait retrieval hashing (DGRH) model to address the gait retrieval problem for large-scale datasets. Our proposed method is based on a supervised hashing method with a deep convolutional network. We use the ability of the convolutional neural network (CNN) to capture the semantic gait features for feature representation and learn the compact hash codes with the compatible hash function. Therefore, our DGRH model combines gait feature learning with binary hash codes. In addition, the learning loss is designed with a classification loss function that learns to preserve similarity and a quantization loss function that controls the quality of the hash codes Results: The proposed method was evaluated against the CASIA-B, OUISIR-LP, and OUISIR-MVLP benchmark datasets and received the promising result for gait retrieval tasks. Conclusions: The end-to-end deep supervised hashing model is able to learn discriminative gait features and is efficient in terms of the storage memory and speed for gait retrieval.
Background: Gait recognition is perceived as the most promising biometric approach for future decades especially because of its efficient applicability in surveillance systems. Due to recent growth in the use of gait biometrics across surveillance systems, the ability to rapidly search for the required data has become an emerging need. Therefore, we addressed the gait retrieval problem, which retrieves people with gaits similar to a query subject from a large-scale dataset. Methods: This paper presents the deep gait retrieval hashing (DGRH) model to address the gait retrieval problem for large-scale datasets. Our proposed method is based on a supervised hashing method with a deep convolutional network. We use the ability of the convolutional neural network (CNN) to capture the semantic gait features for feature representation and learn the compact hash codes with the compatible hash function. Therefore, our DGRH model combines gait feature learning with binary hash codes. In addition, the learning loss is designed with a classification loss function that learns to preserve similarity and a quantization loss function that controls the quality of the hash codes Results: The proposed method was evaluated against the CASIA-B, OUISIR-LP, and OUISIR-MVLP benchmark datasets and received the promising result for gait retrieval tasks. Conclusions: The end-to-end deep supervised hashing model is able to learn discriminative gait features and is efficient in terms of the storage memory and speed for gait retrieval.
Author Min, Pa Pa
Ong, Thian Song
Sayeed, Shohel
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Cites_doi 10.1109/ICoICT.2019.8835194
10.1049/iet-bmt.2014.0042
10.1109/CVPR.2012.6247912
10.1109/TPAMI.2006.38
10.1049/iet-bmt.2018.5063
10.1109/CVPR.2015.7298947
10.1609/aaai.v33i01.33018126
10.1109/CVPR.2011.5995432
10.1109/TIP.2015.2421443
10.1109/CVPRW.2015.7301269
10.1142/S0129065719500278
10.1109/ICPR.2006.67
10.1109/CVPR.2015.7298598
10.1109/ICCV.2009.5459466
10.1007/978-981-10-3002-4_32
10.1109/TIP.2015.2467315
10.1186/s41074-018-0039-6
10.1109/CVPR.2018.00134
10.1109/CVPR.2017.360
10.5281/zenodo.5256521
10.1109/TCSVT.2017.2766199
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Keywords Gait Retrieval
Convolutional Neural Network
Deep Supervised Hashing
Binary codes
Language English
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References J Han (ref19) 2006; 28
X Wang (ref3) 2019; 30
Y Cao (ref17) 2018
H Zhu (ref16) 2016
T Xiao (ref4) 2017
R Zhang (ref15) 2015; 24
P Min (ref20) 2019
W Liu (ref8) 2011
Y Zhou (ref5) 2018; 28
S Sayeed (ref25) 2021
D Muramatsu (ref23) June 2015; 4
J Tang (ref9) 2015; 24
F Shen (ref11) 2015
W Liu (ref10) 2012
H Lai (ref14) 2015
I Rida (ref2) 2018; 8
R Xia (ref13) 2014
J Wang (ref6) 2014
H Chao (ref1) 2019; 33
K Lin (ref12) 2015
Y Gong (ref21) 2011; 2011
S Yu (ref22) 2006
M Rauf (ref18) 2016
B Kulis (ref7) 2009
N Takemura (ref24) 2018; 10
References_xml – year: 2019
  ident: ref20
  article-title: Gait Recognition Using Deep Convolutional Features.
  publication-title: 2019 7th Int Conf Information Communication Technology (ICoICT).
  doi: 10.1109/ICoICT.2019.8835194
– start-page: 2156-2162
  year: 2014
  ident: ref13
  article-title: Supervised hashing for image retrieval via image representation learning.
  publication-title: Proc AAAI Conf Artificial Intelligence.
– volume: 4
  start-page: 62-73(11)
  year: June 2015
  ident: ref23
  article-title: Cross-view gait recognition by fusion of multiple transformation consistency measures.
  publication-title: IET Biometrics.
  doi: 10.1049/iet-bmt.2014.0042
– year: 2012
  ident: ref10
  article-title: Supervised hashing with kernels.
  publication-title: 2012 IEEE Conf Computer Vision Pattern Recognition.
  doi: 10.1109/CVPR.2012.6247912
– volume: 28
  start-page: 316-322
  year: 2006
  ident: ref19
  article-title: Individual recognition using gait energy image.
  publication-title: IEEE Transactions Pattern Analysis Machine Intelligence.
  doi: 10.1109/TPAMI.2006.38
– volume: 8
  start-page: 14-28
  year: 2018
  ident: ref2
  article-title: Robust gait recognition: A comprehensive survey.
  publication-title: IET Biometrics.
  doi: 10.1049/iet-bmt.2018.5063
– year: 2015
  ident: ref14
  article-title: Simultaneous feature learning and hash coding with deep neural networks.
  publication-title: 2015 IEEE Conf Computer Vision Pattern Recognition (CVPR).
  doi: 10.1109/CVPR.2015.7298947
– volume: 33
  start-page: 8126-8133
  year: 2019
  ident: ref1
  article-title: GaitSet: Regarding Gait as a set For CROSS-VIEW gait recognition.
  publication-title: Proc AAAI Conf Artificial Intelligence.
  doi: 10.1609/aaai.v33i01.33018126
– volume: 2011
  year: 2011
  ident: ref21
  article-title: Iterative quantization: A procrustean approach to learning binary codes.
  publication-title: Cvpr.
  doi: 10.1109/CVPR.2011.5995432
– volume: 24
  start-page: 2827-2840
  year: 2015
  ident: ref9
  article-title: Neighborhood Discriminant Hashing for Large-Scale Image Retrieval.
  publication-title: IEEE Transactions Image Processing.
  doi: 10.1109/TIP.2015.2421443
– year: 2015
  ident: ref12
  article-title: Deep learning of binary hash codes for fast image retrieval.
  publication-title: 2015 IEEE Conf Computer Vision Pattern Recognition Workshops (CVPRW).
  doi: 10.1109/CVPRW.2015.7301269
– volume: 30
  start-page: 1950027
  year: 2019
  ident: ref3
  article-title: Human gait recognition based On Frame-by-frame Gait Energy images and Convolutional Long short-term memory.
  publication-title: Int J Neural Syst.
  doi: 10.1142/S0129065719500278
– year: 2006
  ident: ref22
  article-title: A Framework for Evaluating the Effect of View Angle, Clothing and Carrying Condition on Gait Recognition.
  publication-title: 18th Int Conf Pattern Recognition (ICPR'06).
  doi: 10.1109/ICPR.2006.67
– year: 2014
  ident: ref6
  article-title: Hashing for similarity search: A survey.
  publication-title: CoRR.
– year: 2015
  ident: ref11
  article-title: Supervised Discrete Hashing.
  publication-title: 2015 IEEE Conf Computer Vision Pattern Recognition (CVPR).
  doi: 10.1109/CVPR.2015.7298598
– year: 2009
  ident: ref7
  article-title: Kernelized locality-sensitive hashing for scalable image search.
  publication-title: 2009 IEEE 12th Int Conf Computer Vision.
  doi: 10.1109/ICCV.2009.5459466
– start-page: 383-391
  year: 2016
  ident: ref18
  article-title: Gait Retrieval: A Deep Hashing Method for People Retrieval in Video.
  publication-title: Communications in Computer and Information Science Pattern Recognition.
  doi: 10.1007/978-981-10-3002-4_32
– volume: 24
  start-page: 4766-4779
  year: 2015
  ident: ref15
  article-title: Bit-Scalable Deep Hashing With Regularized Similarity Learning for Image Retrieval and Person Re-Identification.
  publication-title: IEEE Transactions on Image Processing.
  doi: 10.1109/TIP.2015.2467315
– volume: 10
  year: 2018
  ident: ref24
  article-title: Multi-view large population gait dataset and its performance evaluation for cross-view gait recognition.
  publication-title: IPSJ transactions on Computer Vision and Applications.
  doi: 10.1186/s41074-018-0039-6
– year: 2018
  ident: ref17
  article-title: Deep Cauchy Hashing for Hamming Space Retrieval.
  publication-title: 2018 IEEE/CVF Conference Computer Vision Pattern Recognition.
  doi: 10.1109/CVPR.2018.00134
– year: 2011
  ident: ref8
  article-title: Hashing with graphs.
  publication-title: In Proc.
– year: 2017
  ident: ref4
  article-title: Joint Detection and Identification Feature Learning for Person Search.
  publication-title: 2017 IEEE Conf Computer Vision Pattern Recognition (CVPR).
  doi: 10.1109/CVPR.2017.360
– year: 2021
  ident: ref25
  article-title: Deep Supervised Hashing for Gait Retrieval (v1.0.1).
  publication-title: Zenodo.
  doi: 10.5281/zenodo.5256521
– volume: 28
  start-page: 2742-2752
  year: 2018
  ident: ref5
  article-title: Kernel-Based Semantic Hashing for Gait Retrieval.
  publication-title: IEEE Transactions on Circuits and Systems for Video Technology.
  doi: 10.1109/TCSVT.2017.2766199
– year: 2016
  ident: ref16
  article-title: Deep hashing network for efficient similarity retrieval.
  publication-title: In Thirtieth AAAI Conference on Artificial Intelligence.
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Snippet Background: Gait recognition is perceived as the most promising biometric approach for future decades especially because of its efficient applicability in...
Background: Gait recognition is perceived as the most promising biometric approach for future decades especially because of its efficient applicability in...
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Title Deep supervised hashing for gait retrieval [version 1; peer review: 1 approved, 1 approved with reservations]
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