This repository contains the implementation of the paper "Detecting, classifying, and mapping retail storefronts using street-level imagery" by Shahin Sharifi Noorian, Sihang Qiu, Achilleas Psyllidis, Alessandro Bozzon, and Geert-Jan Houben. The paper was presented at the 2020 International Conference on Multimedia Retrieval.
The project introduces a novel method for automatically detecting, geo-locating, and classifying retail stores and related commercial functions, on the basis of storefronts extracted from street-level imagery. It presents a deep learning approach that takes storefronts from street-level imagery as input, and directly provides the geo-location and type of commercial function as output.
The repository is structured as follows:
crowdsourcing/
: Contains the Angular project for crowdsourcing.input/
: Directory for input data.labels/
: Contains label files likecategories.txt
andgoogle_label.txt
.location_estimator/
: Contains Python scripts for location estimation.main_video.py
: Main script for video processing.main.py
: Main script for image processing.model_weights
: Directory for model weights.shop_detector/
: Contains Python scripts for shop detection.shop_recognizer/
: Contains Python scripts for shop recognition.
- Python 3.6 or higher
- Angular CLI 8.3.21 or higher
- Clone the repository.
- Install Python dependencies:
pip install -r requirements.txt
. - Navigate to the
crowdsourcing/
directory and install Angular dependencies:npm install
.
Run python main.py
to start the image processing.
Run python main_video.py
to start the video processing.
Navigate to the crowdsourcing/
directory.
- Run
ng serve
for a dev server. Navigate tohttp://localhost:4200/
. The app will automatically reload if you change any of the source files. - Run
ng build
to build the project. The build artifacts will be stored in thedist/
directory. Use the--prod
flag for a production build.
Navigate to the crowdsourcing/
directory.
- Run
ng test
to execute the unit tests via Karma. - Run
ng e2e
to execute the end-to-end tests via Protractor.
If you use this code in your research, please cite the paper:
@inproceedings{sharifi2020detecting,
title={Detecting, classifying, and mapping retail storefronts using street-level imagery},
author={Sharifi Noorian, Shahin and Qiu, Sihang and Psyllidis, Achilleas and Bozzon, Alessandro and Houben, Geert-Jan},
booktitle={Proceedings of the 2020 international conference on multimedia retrieval},
pages={495--501},
year={2020}
}
This project is licensed under the MIT License - see the LICENSE.md file for details.