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Tags:
UT Zappos50K (UT-Zap50K) is a large shoe dataset consisting of 50,025 catalog images collected from Zappos.com. The images are divided into 4 major categories — shoes, sandals, slippers, and boots — followed by functional types and individual brands. The shoes are centered on a white background and pictured in the same orientation for convenient analysis.
This dataset is created in the context of an online shopping task, where users pay special attentions to fine-grained visual differences. For instance, it is more likely that a shopper is deciding between two pairs of similar men's running shoes instead of between a woman's high heel and a man's slipper. GIST and LAB color features are provided. In addition, each image has 8 associated meta-data (gender, materials, etc.) labels that are used to filter the shoes on Zappos.com.
Citation
This dataset is for academic, non-commercial use only. If you use this dataset in a publication, please cite the following papers:
A. Yu and K. Grauman. "Fine-Grained Visual Comparisons with Local Learning". In CVPR, 2014. [paper] [supp] [poster] [bibtex] [project page]
@InProceedings{finegrained, author = {A. Yu and K. Grauman}, title = {Fine-Grained Visual Comparisons with Local Learning}, booktitle = {Computer Vision and Pattern Recognition (CVPR)}, month = {Jun}, year = {2014} }
A. Yu and K. Grauman. "Semantic Jitter: Dense Supervision for Visual Comparisons via Synthetic Images". In ICCV, 2017. [paper] [supp] [poster] [bibtex] [project page]
URL: http://vision.cs.utexas.edu/projects/finegrained/utzap50k/
License: No license specified, the work may be protected by copyright.
Bibtex:
@article{, title= {UT Zappos50K (Version 2.1)}, keywords= {}, author= {Aron Yu and Kristen Grauman}, abstract= {UT Zappos50K (UT-Zap50K) is a large shoe dataset consisting of 50,025 catalog images collected from Zappos.com. The images are divided into 4 major categories — shoes, sandals, slippers, and boots — followed by functional types and individual brands. The shoes are centered on a white background and pictured in the same orientation for convenient analysis. This dataset is created in the context of an online shopping task, where users pay special attentions to fine-grained visual differences. For instance, it is more likely that a shopper is deciding between two pairs of similar men's running shoes instead of between a woman's high heel and a man's slipper. GIST and LAB color features are provided. In addition, each image has 8 associated meta-data (gender, materials, etc.) labels that are used to filter the shoes on Zappos.com. https://i.imgur.com/RoVL6qr.jpg # Citation This dataset is for academic, non-commercial use only. If you use this dataset in a publication, please cite the following papers: A. Yu and K. Grauman. "Fine-Grained Visual Comparisons with Local Learning". In CVPR, 2014. [paper] [supp] [poster] [bibtex] [project page] @InProceedings{finegrained, author = {A. Yu and K. Grauman}, title = {Fine-Grained Visual Comparisons with Local Learning}, booktitle = {Computer Vision and Pattern Recognition (CVPR)}, month = {Jun}, year = {2014} } A. Yu and K. Grauman. "Semantic Jitter: Dense Supervision for Visual Comparisons via Synthetic Images". In ICCV, 2017. [paper] [supp] [poster] [bibtex] [project page]}, terms= {}, license= {}, superseded= {}, url= {http://vision.cs.utexas.edu/projects/finegrained/utzap50k/} }