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Fashion Style Recognition Using Component-Dependent Convolutional Neural Networks | IEEE Conference Publication | IEEE Xplore

Fashion Style Recognition Using Component-Dependent Convolutional Neural Networks


Abstract:

The fashion style recognition is important in online marketing applications. Several algorithms have been proposed, but their accuracy is still unsatisfactory. In this pa...Show More

Abstract:

The fashion style recognition is important in online marketing applications. Several algorithms have been proposed, but their accuracy is still unsatisfactory. In this paper, we share our proposed method for creating an improved fashion style recognition algorithm, component-dependent convolutional neural networks (CD-CNNs). Given that a lot of fashion styles largely depend on the features of specific body parts or human body postures, first, we obtain images of the body parts and postures by using semantic segmentation and pose estimation algorithms; then, we pre-train CD-CNNs. We perform the classification by the concatenated outputs of CD-CNNs and a support vector machine (SVM). Experimental results using the HipsterWars and FashionStyle14 datasets prove that our method is effective and can improve classification accuracy, namely 85.3% for HipsterWars and 77.7% for FashionStyle14, while those of existing methods were 80.9% for HipsterWars and 72.0% for FashionStyle14.
Date of Conference: 22-25 September 2019
Date Added to IEEE Xplore: 26 August 2019
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ISSN Information:

Conference Location: Taipei, Taiwan
References is not available for this document.

1. INTRODUCTION

In recent years, several studies that apply computer vision techniques to the fashion industry have been conducted. These include algorithms that search for similar clothes by using images [1], [2] or images and text [3], [4], and algorithms that create images with arbitrary poses from images and posture data [5], [6].

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1.
S. Liu et al., "Street-to-shop: Cross-scenario clothing retrieval via parts alignment and auxiliary set", CVPR, pp. 3330-3337, 2012.
2.
M. H. Kiapour et al., "Where to buy it: Matching street clothing photos in online shops", ICCV, pp. 3343-3351, 2015.
3.
A. Kovashka et al., "Whittlesearch: Image search with relative attribute feedback", CVPR, pp. 2973-2980, 2012.
4.
B. Zhao et al., "Memory-augmented attribute manipulation networks for interactive fashion search", CVPR, pp. 1520-1528, 2017.
5.
C. Lassner et al., "A generative model of people in clothing", ICCV, pp. 853-862, 2017.
6.
L. Ma et al., "Pose guided person image generation", NIPS, pp. 406-416, 2017.
7.
M. Takagi et al., "What makes a style: Experimental analysis of fashion prediction", ICCVW, pp. 2247-2253, 2017.
8.
K. Simonyan and A. Zisserman, "Very deep convolutional networks for large-scale image recognition", ICLR, 2015.
9.
C. Szegedy et al., "Rethinking the inception architecture for computer vision", CVPR, pp. 2818-2826, 2016.
10.
K. He et al., "Deep residual learning for image recognition", CVPR, pp. 770-778, 2016.
11.
F. Chollet, "Xception: Deep learning with depthwise separable convolutions", CVPR, pp. 1251-1258, 2017.
12.
M. H. Kiapour et al., "Hipster wars: Discovering elements of fashion styles", ECCV, pp. 472-488, 2014.
13.
E. Simo-Serra and H. Ishikawa, "Fashion style in 128 floats: Joint ranking and classification using weak data for feature extraction", CVPR, pp. 298-307, 2016.
14.
T. Nakajima et al., "Accuracy improvement of fashion style classification by appropriate training data and estimation of human regions", The Institute of Electronics Information and Communication Engineers Technical Report, pp. 197-202, 2018.
15.
W. Liu et al., "SSD: Single shot multibox detector", ECCV, pp. 21-37, 2016.
16.
H. Zhao et al., "Pyramid scene parsing network", CVPR, pp. 2881-2890, 2017.
17.
D. Lin et al., "Deep LAC: Deep localization alignment and classification for fine-grained recognition", CVPR, pp. 1666-1674, 2015.
18.
H. Zhang et al., "SPDA-CNN: Unifying semantic part detection and abstraction for fine-grained recognition", CVPR, pp. 1143-1152, 2016.
19.
L. Chen et al., "Encoder-decoder with atrous separable convolution for semantic image segmentation", ECCV, pp. 801-818, 2018.
20.
X. Liang et al., "Look into person: Joint body parsing pose estimation network and a new benchmark", PAMI, vol. 41, no. 4, pp. 871-885, April 2019.
21.
A. Newell et al., "Associative embedding: End-to-end learning for joint detection and grouping", NIPS, pp. 2277-2287, 2017.
22.
J. Deng et al., "Imagenet: A large-scale hierarchical image database", CVPR, pp. 248-255, 2009.
23.
F. Pedregosa et al., "Scikit-learn: Machine learning in Python", Journal of Machine Learning Research, vol. 12, pp. 2825-2830, 2011.
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References

References is not available for this document.