• Stars
    star
    347
  • Rank 122,141 (Top 3 %)
  • Language
    MATLAB
  • Created almost 8 years ago
  • Updated about 3 years ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Fashion Landmark Detection in the Wild

Fashion Landmark Detection in the Wild

Fashion landmarks are functional keypoints defined on clothes, such as corners of neckline, hemline and cuff. They have been recently introduced as an effective visual representation for fashion image understanding. Our Deep Fashion Alignment (DFA) takes clothes bounding box as input and predict both fashion landmark locations and visibility states.

[Project] [Paper]

Overview

Deep Fashion Alignment (DFA) is the authors' implementation of the fashion landmark detector described in:
"Fashion Landmark Detection in the Wild"
Ziwei Liu, Sijie Yan, Ping Luo, Xiaogang Wang, Xiaoou Tang (The Chinese University of Hong Kong)
In European Conference on Computer Vision (ECCV) 2016

Contact: Sijie Yan ([email protected]) and Ziwei Liu ([email protected])

Getting started

  • Install and compile the Caffe library.
  • Download the pre-trained models (See Model Zoo for details):
Place "*.caffemodel" into "./models/FLD_upper(or lower or full)/" 
  • Download the testing images. (See Dataset for details):
Place "*.jpg" into "./data/FLD_upper(or lower or full)/" 
  • Run the testing script:
matlab ./scripts/demo.m

Model Zoo:

  • FLD_upper_models.zip: 3-stage cascaded CNN models trained on upper-body clothes of Fashion Landmark Detection Benchmark (FLD).
  • FLD_lower_models.zip: 3-stage cascaded CNN models trained on lower-body clothes of Fashion Landmark Detection Benchmark (FLD).
  • FLD_full_models.zip: 3-stage cascaded CNN models trained on full-body clothes of Fashion Landmark Detection Benchmark (FLD).

Dataset

Large-scale Fashion (DeepFashion) Database: Fashion Landmark Detection Benchmark (FLD)

License and Citation

The use of this software is RESTRICTED to non-commercial research and educational purposes.

@inproceedings{liu2016fashionlandmark,
 author = {Ziwei Liu, Sijie Yan, Ping Luo, Xiaogang Wang, and Xiaoou Tang},
 title = {Fashion Landmark Detection in the Wild},
 booktitle = {European Conference on Computer Vision (ECCV)},
 month = {October},
 year = {2016} 
}