Deep Learning with Discriminative Margin Loss for Cross-Domain Consumer-to-Shop Clothes Retrieval

Consumer-to-shop clothes retrieval refers to the problem of matching photos taken by customers with their counterparts in the shop. Due to some problems, such as a large number of clothing categories, different appearances of clothing items due to different camera angles and shooting conditions, dif...

Full description

Bibliographic Details
Published in:Sensors
Main Authors: Pendar Alirezazadeh, Fadi Dornaika, Abdelmalik Moujahid
Format: Text
Language:English
Published: Multidisciplinary Digital Publishing Institute 2022
Subjects:
DML
Online Access:https://doi.org/10.3390/s22072660
id ftmdpi:oai:mdpi.com:/1424-8220/22/7/2660/
record_format openpolar
spelling ftmdpi:oai:mdpi.com:/1424-8220/22/7/2660/ 2023-08-20T04:06:09+02:00 Deep Learning with Discriminative Margin Loss for Cross-Domain Consumer-to-Shop Clothes Retrieval Pendar Alirezazadeh Fadi Dornaika Abdelmalik Moujahid 2022-03-30 application/pdf https://doi.org/10.3390/s22072660 EN eng Multidisciplinary Digital Publishing Institute Sensing and Imaging https://dx.doi.org/10.3390/s22072660 https://creativecommons.org/licenses/by/4.0/ Sensors; Volume 22; Issue 7; Pages: 2660 cross-domain fashion retrieval margin-based loss function adaptive margin deep learning discriminative analysis Text 2022 ftmdpi https://doi.org/10.3390/s22072660 2023-08-01T04:37:07Z Consumer-to-shop clothes retrieval refers to the problem of matching photos taken by customers with their counterparts in the shop. Due to some problems, such as a large number of clothing categories, different appearances of clothing items due to different camera angles and shooting conditions, different background environments, and different body postures, the retrieval accuracy of traditional consumer-to-shop models is always low. With advances in convolutional neural networks (CNNs), the accuracy of garment retrieval has been significantly improved. Most approaches addressing this problem use single CNNs in conjunction with a softmax loss function to extract discriminative features. In the fashion domain, negative pairs can have small or large visual differences that make it difficult to minimize intraclass variance and maximize interclass variance with softmax. Margin-based softmax losses such as Additive Margin-Softmax (aka CosFace) improve the discriminative power of the original softmax loss, but since they consider the same margin for the positive and negative pairs, they are not suitable for cross-domain fashion search. In this work, we introduce the cross-domain discriminative margin loss (DML) to deal with the large variability of negative pairs in fashion. DML learns two different margins for positive and negative pairs such that the negative margin is larger than the positive margin, which provides stronger intraclass reduction for negative pairs. The experiments conducted on publicly available fashion datasets DARN and two benchmarks of the DeepFashion dataset—(1) Consumer-to-Shop Clothes Retrieval and (2) InShop Clothes Retrieval—confirm that the proposed loss function not only outperforms the existing loss functions but also achieves the best performance. Text DML MDPI Open Access Publishing Sensors 22 7 2660
institution Open Polar
collection MDPI Open Access Publishing
op_collection_id ftmdpi
language English
topic cross-domain fashion retrieval
margin-based loss function
adaptive margin
deep learning
discriminative analysis
spellingShingle cross-domain fashion retrieval
margin-based loss function
adaptive margin
deep learning
discriminative analysis
Pendar Alirezazadeh
Fadi Dornaika
Abdelmalik Moujahid
Deep Learning with Discriminative Margin Loss for Cross-Domain Consumer-to-Shop Clothes Retrieval
topic_facet cross-domain fashion retrieval
margin-based loss function
adaptive margin
deep learning
discriminative analysis
description Consumer-to-shop clothes retrieval refers to the problem of matching photos taken by customers with their counterparts in the shop. Due to some problems, such as a large number of clothing categories, different appearances of clothing items due to different camera angles and shooting conditions, different background environments, and different body postures, the retrieval accuracy of traditional consumer-to-shop models is always low. With advances in convolutional neural networks (CNNs), the accuracy of garment retrieval has been significantly improved. Most approaches addressing this problem use single CNNs in conjunction with a softmax loss function to extract discriminative features. In the fashion domain, negative pairs can have small or large visual differences that make it difficult to minimize intraclass variance and maximize interclass variance with softmax. Margin-based softmax losses such as Additive Margin-Softmax (aka CosFace) improve the discriminative power of the original softmax loss, but since they consider the same margin for the positive and negative pairs, they are not suitable for cross-domain fashion search. In this work, we introduce the cross-domain discriminative margin loss (DML) to deal with the large variability of negative pairs in fashion. DML learns two different margins for positive and negative pairs such that the negative margin is larger than the positive margin, which provides stronger intraclass reduction for negative pairs. The experiments conducted on publicly available fashion datasets DARN and two benchmarks of the DeepFashion dataset—(1) Consumer-to-Shop Clothes Retrieval and (2) InShop Clothes Retrieval—confirm that the proposed loss function not only outperforms the existing loss functions but also achieves the best performance.
format Text
author Pendar Alirezazadeh
Fadi Dornaika
Abdelmalik Moujahid
author_facet Pendar Alirezazadeh
Fadi Dornaika
Abdelmalik Moujahid
author_sort Pendar Alirezazadeh
title Deep Learning with Discriminative Margin Loss for Cross-Domain Consumer-to-Shop Clothes Retrieval
title_short Deep Learning with Discriminative Margin Loss for Cross-Domain Consumer-to-Shop Clothes Retrieval
title_full Deep Learning with Discriminative Margin Loss for Cross-Domain Consumer-to-Shop Clothes Retrieval
title_fullStr Deep Learning with Discriminative Margin Loss for Cross-Domain Consumer-to-Shop Clothes Retrieval
title_full_unstemmed Deep Learning with Discriminative Margin Loss for Cross-Domain Consumer-to-Shop Clothes Retrieval
title_sort deep learning with discriminative margin loss for cross-domain consumer-to-shop clothes retrieval
publisher Multidisciplinary Digital Publishing Institute
publishDate 2022
url https://doi.org/10.3390/s22072660
genre DML
genre_facet DML
op_source Sensors; Volume 22; Issue 7; Pages: 2660
op_relation Sensing and Imaging
https://dx.doi.org/10.3390/s22072660
op_rights https://creativecommons.org/licenses/by/4.0/
op_doi https://doi.org/10.3390/s22072660
container_title Sensors
container_volume 22
container_issue 7
container_start_page 2660
_version_ 1774717092332830720