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metadata
datasets:
  - rsdmu/streetreview
task_categories:
  - zero-shot-classification
  - image-classification
  - image-segmentation
  - image-feature-extraction
tags:
  - urban-planning
  - montreal
  - publicspace
  - inclusivity
  - accessibility
  - participatory
license: cc-by-4.0
language:
  - en
size_categories:
  - 10K<n<100K
pretty_name: Street Review Dataset
annotations_creators:
  - crowdsourced
  - expert-generated

StreetReview Dataset

image/png

Overview

StreetReview is a curated dataset designed to evaluate the inclusivity, accessibility, aesthetics, and practicality of urban streetscapes, particularly in a multicultural city context. Focused on Montréal, Canada, the dataset combines diverse demographic evaluations with rich metadata and street-view imagery. It aims to advance research in urban planning, public space design, and machine learning applications for creating inclusive and user-friendly urban environments.

Table of Contents

Dataset Structure

The StreetReview dataset is organized as follows:

Root Directory

  • metadata.csv: Comprehensive metadata for each evaluation point.
  • street_eval/: CSV files containing evaluation data for individual street sections.
  • street_img/: Street-view images categorized by street and section.

Street Image Data

Images are stored in street_img/ and organized into folders by street and section, with three perspectives per section (_main, _head, _tail). Example structure:

street_img/
├── i01_cote_sainte_catherine_main/
│   ├── main_001.jpg
│   ├── main_002.jpg
│   ...
└── i02_rue_berri_main/
    ├── main_001.jpg
    ├── main_002.jpg
    ...

Street Evaluation Data

Evaluation data is stored in street_eval/ as CSV files named after their corresponding street section. Example:

street_eval/
├── i01_evaluations.csv
├── i02_evaluations.csv
...

Methodology

Participatory Evaluation Process

The dataset was created using a participatory approach to capture diverse urban experiences:

  1. Individual Evaluation: Participants rated 20 street on four criteria using a color-coded system.
  2. Group Evaluation: In focus groups, participants reassessed images collectively and refined their evaluations.

Data Collection

  • Participants: 28 individuals contributed to criteria development; 12 participated in detailed evaluations.
  • Evaluation Points: 60 points across 20 streets, with two images per point.
  • Dataset Expansion: Up to 250 images per point, rotated for diversity.

Data Fields

Metadata

The metadata.csv file contains attributes such as:

Field Description
point_id Unique identifier
sidewalk_width Width of sidewalks
greenery_presence Presence of greenery
building_height Height of adjacent buildings
... ...

Evaluations

Each CSV file in street_eval/ includes ratings from various demographic groups. Ratings are based on a 1-4 scale. For example, a score of 1 for accessibility means "not accessible," scores of 2 or 3 indicate "average accessibility," and a score of 4 represents "highest accessibility."

Field Description
lgbtqia2+_accessibility Accessibility rating by LGBTQIA2+
elderly_male_practicality Practicality rating by elderly males
group_inclusivity Inclusivity rating by groups of 3-5 diverse individuals
... ...

Usage

Cloning the Repository

Clone the repository with:

git clone https://huggingface.co./datasets/rsdmu/streetreview

Example Code

import pandas as pd
from PIL import Image
import os

# Load metadata
metadata = pd.read_csv('metadata.csv')

# Load evaluation data
eval_data = pd.read_csv('street_eval/i01_evaluations.csv')

# Display an image
image_path = 'street_img/i01_cote_sainte_catherine_main/main_001.jpg'
image = Image.open(image_path)
image.show()

License

Licensed under Creative Commons Attribution 4.0 International (CC BY 4.0).

Citing StreetReview

@dataset{streetreview2024,
  title = {StreetReview Dataset: Evaluating Urban Streetscapes for Inclusivity and Accessibility},
  author = {Rashid Mushkani},
  year = {2024},
  publisher = {Hugging Face},
  url = {https://huggingface.co./datasets/rsdmu/streetreview}
}

Contributing

We welcome contributions! Please fork the repository, make changes, and submit a pull request.

Contact

For inquiries, contact:


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