Influence of urban forests on residential property values: A systematic review of remote sensing-based studies
Ewane Basil Ewane,
Shaurya Bajaj,
Luisa Velasquez-Camacho,
Shruthi Srinivasan,
Juyeon Maeng,
Anushka Singla,
Andrea Luber,
Sergio de-Miguel,
Gabriella Richardson,
Eben North Broadbent,
Adrian Cardil,
Wan Shafrina Wan Mohd Jaafar,
Meshal Abdullah,
Ana Paula Dalla Corte,
Carlos Alberto Silva,
Willie Doaemo,
Midhun Mohan
Affiliations
Ewane Basil Ewane
United Nations Volunteering Program, via Morobe Development Foundation, Lae 00411, Papua New Guinea; Ecoresolve Inc., San Francisco, CA, USA, 94105; Department of Geography, Faculty of Social and Management Sciences, University of Buea, P.O. BOX 63 Buea, Cameroon
Shaurya Bajaj
United Nations Volunteering Program, via Morobe Development Foundation, Lae 00411, Papua New Guinea; Ecoresolve Inc., San Francisco, CA, USA, 94105
Luisa Velasquez-Camacho
Unit of Applied Artificial Intelligence, Eurecat, Centre Tecnològic de Catalunya, 08005 Barcelona, Spain; Department of Agricultural and Forest Sciences and Engineering, University of Lleida, Av. Alcalde Rovira Roure 191, 5198 Lleida, Spain
Shruthi Srinivasan
Department of Forest Analytics, Texas A&M Forest Service, Dallas, TX 75252, USA
Juyeon Maeng
United Nations Volunteering Program, via Morobe Development Foundation, Lae 00411, Papua New Guinea; AAP Labs, Cornell University, USA
Anushka Singla
United Nations Volunteering Program, via Morobe Development Foundation, Lae 00411, Papua New Guinea
Andrea Luber
United Nations Volunteering Program, via Morobe Development Foundation, Lae 00411, Papua New Guinea
Sergio de-Miguel
Department of Agricultural and Forest Sciences and Engineering, University of Lleida, Av. Alcalde Rovira Roure 191, 5198 Lleida, Spain; Joint Research Unit CTFC-AGROTECNIO-CERCA, Ctra. Sant Llorenç de Morunys km 2, 25280 Solsona, Spain
Gabriella Richardson
United Nations Volunteering Program, via Morobe Development Foundation, Lae 00411, Papua New Guinea; Department of Sociology and Anthropology, University of Guelph, Guelph ON, Canada
Eben North Broadbent
Spatial Ecology and Conservation (SPEC) Lab, School of Forest, Fisheries, and Geomatics Sciences, University of Florida, PO Box 110410, Gainesville, FL 32611, USA
Adrian Cardil
Department of Agricultural and Forest Sciences and Engineering, University of Lleida, Av. Alcalde Rovira Roure 191, 5198 Lleida, Spain; Joint Research Unit CTFC-AGROTECNIO-CERCA, Ctra. Sant Llorenç de Morunys km 2, 25280 Solsona, Spain; Tecnosylva, S.L Parque Tecnológico de León, 24004 León, Spain
Wan Shafrina Wan Mohd Jaafar
Earth Observation Centre, Institute of Climate Change, Universiti Kebangsaan Malaysia, Bangi 43600, Selangor, Malaysia
Meshal Abdullah
Department of Geography, College of Arts and Social Sciences, Sultan Qaboos University, Muscat, P.O. Box 50, Oman; Department of Ecology and Conservation Biology, Texas A&M University, College Station, TX, USA
Ana Paula Dalla Corte
BIOFIX Research Center, Federal University of Paraná (UFPR), Curitiba 80210-170, Brazil
Carlos Alberto Silva
Forest Biometrics, Remote Sensing and Artificial Intelligence Laboratory (Silva Lab), University of Florida, USA
Willie Doaemo
United Nations Volunteering Program, via Morobe Development Foundation, Lae 00411, Papua New Guinea; Department of Civil Engineering, Papua New Guinea University of Technology, Lae, 00411, Papua New Guinea; Morobe Development Foundation, Doyle Street, Trish Avenue-Eriku, Lae 00411, Papua New Guinea
Midhun Mohan
United Nations Volunteering Program, via Morobe Development Foundation, Lae 00411, Papua New Guinea; Ecoresolve Inc., San Francisco, CA, USA, 94105; Department of Geography, University of California-Berkeley, Berkeley, CA 94709, USA; Corresponding author. United Nations Volunteering Program, via Morobe Development Foundation, Lae 00411, Papua New Guinea.
Urban forests provide direct and indirect benefits to human well-being that are increasingly captured in residential property values. Remote Sensing (RS) can be used to measure a wide range of forest and vegetation parameters that allows for a more detailed and better understanding of their specific influences on housing prices. Herein, through a systematic literature review approach, we reviewed 89 papers (from 2010 to 2022) from 21 different countries that used RS data to quantify vegetation indices, forest and tree parameters of urban forests and estimated their influence on residential property values. The main aim of this study was to understand and provide insights into how urban forests influence residential property values based on RS studies. Although more studies were conducted in developed (n = 55, 61.7%) than developing countries (n = 34, 38.3%), the results indicated for the most part that increasing tree canopy cover on property and neighborhood level, forest size, type, greenness, and proximity to urban forests increased housing prices. RS studies benefited from spatially explicit repetitive data that offer superior efficiency to quantify vegetation, forest, and tree parameters of urban forests over large areas and longer periods compared to studies that used field inventory data. Through this work, we identify and underscore that urban forest benefits outweigh management costs and have a mostly positive influence on housing prices. Thus, we encourage further discussions about prioritizing reforestation and conservation of urban forests during the urban planning of cities and suburbs, which could support UN Sustainable Development Goals (SDGs) and urban policy reforms.