
A recent research shows that we can quantify โUrban Qualityโ by combining public perception of beauty, comfort, safety and ambience with measurable urban features like greenery, shading, seating and pedestrian activityโhelping cities design more human-centered spaces.
Have you ever walked down a street and instantly feltโฆ wow, I love this place! ๐คฉ
Or maybe the opposite โ a wide, empty road that just feels uncomfortable or unsafe ๐ซ๐ถโโ๏ธ
That experience โ that feeling โ is called Urban Quality ๐ก
But hereโs the big engineering question ๐ค:
Can we measure these feelings with numbers?
A 2025 research study from University of Technology Sydney explored exactly that!
Itโs called:
โQuantifying Quality: Numerical Representations of Subjective Perceptions of Urban Spaceโ
The goal? โ Turn peopleโs emotional reactions into quantifiable engineering data โ
Letโs break down how they did it ๐
The researchers chose five qualities that shape how people experience the city:
| Trait | What it means |
|---|---|
| โจ Beauty | Looks good visually |
| ๐ Comfort | Easy & pleasant to be in |
| ๐ก๏ธ Safety | Feels secure for pedestrians |
| ๐ง Ambience | Enjoyable atmosphere, vibe |
| ๐งฑ Character | Sense of uniqueness |
๐ These qualities came from academic literature, planners, and place-making strategies in Sydney.
Instead of relying on Google Street View (which is vehicle-oriented ๐), the team went out and photographed 174 real locations across 11 suburbs of Sydney:
โ
Streets
โ
Plazas
โ
Shopping areas
โ
Mixed-use neighborhoods
Every photo was geo-tagged โ๏ธ
Captured at eye level โ๏ธ
Representing different neighborhood types โ๏ธ
236 participants rated each location based on the 5 traits:
โ
Good
โ Neutral
โ Bad
Demographics such as age, gender & location were collected too ๐
Younger people tended to be more positive about city spaces ๐
Older people were more neutral or negative ๐ง๐
The team used:
This helped quantify elements like:
โ
Trees & greenery
โ
Roads
โ
Buildings & glass faรงades
โ
Pedestrians
โ
Seating
โ
Shading
โ
Cars ๐ (lots of cars usually โโโ)
โ
Street furniture โ๐ช
The result?
Every image got numeric values for real-world design features ๐ช๐
More than 100 geographic & demographic variables were mapped:
But hereโs a twist ๐
GIS data had weak correlation with peopleโs perception ๐ฒ
Why? Spatial context โ What the photo shows!
Urban Quality = what you actually see + how it makes you feel ๐ญ
Based on the highest-ranked images:
โ
More trees ๐ณ
โ
More shading (trees + canopies) ๐ค๏ธ
โ
Active faรงades (storefronts, restaurants) ๐ฝ๏ธ
โ
More people = lively = safe
โ
More pedestrian space ๐ถโโ๏ธ
โ
Seating where people can linger ๐ช
โ
Balance of traditional + modern architecture ๐๏ธ๐ข
โ
More textures & materials in pavements ๐
And what makes a space feel BAD?
๐ซ Car-dominated scenes
๐ซ Too much sky view โ empty, exposed feeling
๐ซ Monotonous or blank faรงades
๐ซ Lack of greenery
๐ซ No places to sit or gather
๐ซ Huge roads cutting through spaces
Hereโs the mentality:
If a place is built for cars, humans will feel unwelcome.
If a place is built for people โ humans thrive ๐
| Quality | Boosters in Urban Space | What to Avoid |
|---|---|---|
| โจ Beauty | greenery, active faรงades, varied textures | blank walls, traffic clutter |
| ๐ง Ambience | shade + people + mixed materials | open empty areas |
| ๐ Comfort | seating + shade + trees | heat, noise, exposure |
| ๐ก๏ธ Safety | good lighting, walkable paths, other pedestrians | isolation, car dominance |
These become numeric targets for designers.
Example: โComfort = โฅ17% trees + seating + shade featuresโ โ๏ธ
Most cities plan using technical data only: roads, density, zoning, property valuesโฆ
But people live in cities emotionally โค๏ธ๐๏ธ
This framework connects: Human perception + urban design metrics
๐ฏ Perfect for:
โ
Policymaking
โ
Multi-objective optimization in design
โ
Benchmarking neighborhood performance
โ
Equitable upgrades to disadvantaged areas
Imagine automated tools that say:
โAdd 12% more tree cover to boost Comfort by 20%โ ๐ณ๐
Thatโs the future this research pushes toward ๐ฑ
The study recognizes:
So future versions may include:
โ
Audio-visual data
โ
VR pedestrian simulations
โ
More diverse participants
โ
Real-time sensors tracking comfort (heat/noise)
This research is a major step toward:
๐ People-first urban planning
๐ฏ Data-driven placemaking
๐ง AI-assisted design that reflects human emotion
๐ Optimization tools to guide development decisions
๐ค More inclusive cities that reflect diverse needs
Soon, cities could measure how happy their streets make us โ then redesign them to make us happier every day ๐๏ธ
Great urban spaces are walkable, green, social and textured โ and now, we can measure what makes them feel great! ๐โจ
Thanks to this research, Urban Quality is no longer a mystery โ itโs a designable, optimizable engineering target ๐
๐๏ธ Urban Quality - How well a city space supports peopleโs comfort, safety, enjoyment, and overall experience.
๐ณ Urban Space - Any area in a city used by people โ like streets, parks, plazas, sidewalks. - More about this concept in the article "๐ฟ Urban Weeds to the Rescue: How Ruderal Plants Are Saving Our Cities".
โญ Subjective Perception - A personal feeling or opinion โ how someone emotionally interprets a place.
๐ข Quantification - Turning feelings or observations into numbers that can be measured and compared.
๐งฉ Image Segmentation - A computer vision technique that divides an image into parts (trees, buildings, people, etc.) so we can measure whatโs in it. - More about this concept in the article "ONCOPILOT: Redefining Tumor Evaluation with AI ๐ฆ ๐ค".
๐ฐ๏ธ GIS (Geographic Information System) - A mapping tool that analyzes data tied to locations โ used to understand patterns in space. - More about this concept in the article "Smart Tech Meets Climate Challenges ๐ How GIS, Remote Sensing, and AI Are Saving Our Farms".
๐ธ Pedestrian Viewpoint - Images or observations taken from the height and perspective of a person walking โ not from a car.
๐ฅ Public Survey - A method where real people give feedback or ratings to help collect subjective opinions. - More about this concept in the article "Bridging the Equity Gap in Urban Transportation ๐".
๐ง AI Object Detection - A machine learning model that identifies and counts objects (like cars or trees) in images. - More about this concept in the article "Smarter Helmet Detection with GAML-YOLO ๐ต Enhancing Road Safety Using Advanced AI Vision".
๐ถโโ๏ธ Walkability - How easy, pleasant, and safe it is to walk in an area โ a big factor of urban experience. - More about this concept in the article "๐ถโโ๏ธ Walking the Talk: How Engineers Measure City Walkability".
๐ข Active Faรงades - Building fronts with storefronts, cafรฉs or windows that create life and interaction facing the street.
๐ Correlation - A statistical relationship โ if one thing increases or decreases when another does.
๐ Pareto Ranking / Pareto Front - A method used to find the best options when there are multiple competing goals โ like balancing beauty and safety at once. - More about this concept in the article "AUV Solar Optimization ๐ The Next Wave in Marine Robotics".
Source: Makki, M.; Mathers, J.; Matthews, L.; Biloria, N.; Melsom, J.; Cheung, L.K.; Ricafort, K.; Raymond, B.; Hannam, M. Quantifying Quality: Numerical Representations of Subjective Perceptions of Urban Space. Urban Sci. 2025, 9, 460. https://doi.org/10.3390/urbansci9110460
From: University of Technology Sydney; SJB.