Remote sensing for urban decisions

Greenness, Temperature & Equity - made actionable

Map showing annual LST trend in a coastal city with a color gradient from purple (0.1°C/year) to yellow (0.25°C/year). An inset graph depicts the frequency distribution of LST trend values with a median of 0.156 and a standard deviation of 0.027, illustrating the variation in surface temperature trends.

Greater Los Angeles, CA surface temperature trend 1985-2021 at 30-meters resolution.

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Urban Heat and Canopy Priority
$1,950.00

Describe important details like price, value, length of service, and why it’s unique. Or use these sections to showcase different key values of your products or services.

NDVI/LST Time-Series
$149.00

– Landsat trend & vegetative cooling diagnostics
– Drivers (canopy, impervious, water balance)
– Maps + brief + code

Custom Analysis
$199.00

Describe important details like price, value, length of service, and why it’s unique. Or use these sections to showcase different key values of your products or services.

Want a decision-ready map for your AOI? I can scope a 1–2 week pilot. → E-mail me

Or, find me on Upwork, Fiverr, or Kolabtree

Selected Case Studies

El Paso Tree Prioritization

    • Built a priority index at both census-tract and parcel scales that blends equity (income, race/ethnicity, tenure) with biophysical heat (LST, impervious, canopy, NDVI).

    • Uses three variantsadditive (cardinal), rank/ordinal, and multiplicative—to surface consensus hotspots and reveal trade-offs.

    • Introduced stakeholder-tunable weights so the City can compare Equity-first, Heat-first, and Balanced scenarios.

    • Integrated sub-meter imagery to pinpoint parcels where trees are most likely to cool and survive (feasibility mask).

    • Early patterns: high-heat, low-canopy corridors align with historically underserved blocks; parcel-level screening removes no-plant zones before field work.

    • Deliverables (1–2 weeks): tract/parcel priority maps, ranked lists with indicator scores, scenario workbook (adjust weights), 8–10 pp brief, and reproducible GEE/Python code.

    • Data needs: open imagery + Census/ACS; optional local tree inventories/ROW constraints if available.

    • Use it for: grant targeting, capital planning, and community engagement sessions with defensible, transparent scoring.

Global Urban Ecology Analysis (311 cities; 1990-2024)

    • Across 311 cities, vegetative cooling is weakening~73% show a significant decline in the LST–NDVI cooling slope.

    • Warming is widespread; NDVI trends are mixed, with the largest marginal cooling gains when greening low-NDVI areas.

    • Built volume, elevation, and albedo dominate city-to-city differences; changing UHI intensity and water stress shape trends over time.

    • Practical takeaway: prioritize greening in low-NDVI corridors, and pair canopy with water management in dry climates to maintain cooling benefits.

    • Deliverables (1–2 weeks): your city’s 1990–present benchmarks (NDVI/LST/cooling), driver diagnostics, and a where-to-green-first map, plus a short policy brief and reproducible code.

    • Comparative lens: shows how your city stacks up against the global sample and what levers (canopy, form, water) move cooling the most in your context.

Los Angeles Urban Area Greenness/Temperature Study (1990-2021)

    • LST increased (~+0.13 °C/yr citywide) while NDVI rose, and vegetative cooling strengthened overall—masking strong neighborhood contrasts.

    • Drought response is coastal→inland-graded: inland tracts heat more during dry periods; near-coast areas are buffered.

    • Greening slows warming, and equity signals matter: income/impervious patterns help explain where heat and greenness changed most.

    • The classic “luxury effect” (wealthier = greener/cooler) weakened over decades, indicating shifting equity dynamics.

    • Deliverables (1–2 weeks): Landsat trend maps (NDVI, LST, cooling), drought contrasts, equity overlays, and a concise brief with recommended priority zones; includes reproducible GEE/Python code.

    • Decision uses: target cooling investments, design equity-aware canopy programs, and communicate drought-sensitive risk to stakeholders.

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About Dion Kucera

Ph.D. | 9+ years GIS experience | Peer-reviewed publications | Landsat/Sentinel/MODIS/ArcGIS/MATLAB

I’m a remote-sensing & urban-climate scientist who turns satellite data into policy-ready maps. My work focuses on NDVI, LST, and vegetative cooling—with equity-aware diagnostics that help cities target canopy, cooling, and resilience investments.

I hold a PhD (UC Riverside, 2024) and have 9+ years’ experience analyzing Landsat/Sentinel/MDOIS time series, plus a UCR postdoc (2024–25) doing large-scale socioecological studies. I’ve published in Urban Climate (Los Angeles multi-decadal greenness/heat & equity) and lead projects spanning national and global analyses, tree-planting prioritization, urban wildfire, and invasive species mapping.

What you get: clear maps and briefs, optional web dashboards, and reproducible code (on request; GEE/Python/ArcGIS Pro) so your team can rerun and extend.

Ready to map what matters for your AOI? Contact me with your needs by e-mail.

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How I work

Night aerial view of a city with illuminated streets, bridges, and waterways.

1) Frame the decision. Define the question, AOI, and constraints (water/ROW/species).

Satellite image of a river winding through a landscape with urban and agricultural areas, and scattered patches of forest.

2) Build the pipeline. Landsat/Sentinel stacks → NDVI/LST/cooling/equity; QA and drivers.

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3) Deliver & hand off. Maps + 8–12-page brief + optional web map + reproducible GEE/Python code (on request).

Frequently Asked Questions

  • For long-run trends and cooling diagnostics I use Landsat (1985–present). For fine targeting I add Sentinel-2 (10 m) and, in the U.S., NAIP. Context layers include NLCD/LCMS (canopy/impervious), Census/ACS (equity), and climate/water-balance datasets (e.g., TerraClimate/SPEI). Parcel-level outputs are available where higher-resolution data support it.

    I am also happy to work with other datasets such as acquired aerial imagery, MODIS, Planet, etc.

  • A decision-ready package:

    • Maps (priority zones, NDVI/LST trends, cooling diagnostics)

    • A concise 8–12 page brief in plain English with methods & caveats

    • Exportable GeoTIFF/GeoPackage/CSV

    • Optional web map/dashboard

    • Reproducible code on request (Google Earth Engine / Python / ArcGIS Pro) so your team can rerun and extend

  • Most city pilots finish in 1–2 weeks. Pricing depends on AOI size and options (equity overlays, parcel screening, dashboard), typically from $1,950–$2,400 for a pilot. Multi-city or ongoing monitoring can be scoped after the pilot.

  • Yes—methods are sensor-standard, so I work worldwide. I can incorporate your shapefiles/parcel data and will sign an NDA if needed. If results must remain internal, deliverables are labeled “results informed internal planning.”

Let’s map what matters for you

Replies within 1 business day.

Tell me a bit about your project so I can prep before we talk:

  • Area of interest / location

  • Service you need (or your question)

  • Desired timeline (ASAP, <1 month, 1–3 months)

  • Anything you’ve already tried or datasets you have

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