List of works
Abstract
Visualizing Access and Land Use Change in Hurricane-Affected Landscapes through Web Cartography
Published 12/15/2025
Abstracts of the ICA, 10, 202
International Cartographic Conference (ICC 2025), 08/17/2025–08/22/2025, Vancouver, Canada
As coastal landscapes face increasingly rapid transformation due to hurricanes and redevelopment, cartography offers a critical lens for understanding and communicating shoreline access's shifting visual, legal, and ecological dimensions. This research presents a cartographically driven framework for modeling and visualizing viewsheds in hurricane-prone communities along Florida’s Gulf and Atlantic coasts. It emphasizes the design of maps that convey how sightlines to the coast intersect with multiple land use and property categories, highlighting the complexity of coastal planning and amenity access.
Using digital elevation models (DEMs), state-level land use/land cover data (FLUCCS), and cadastral property layers, we developed a GIS-based method to generate observation-based viewsheds, incorporating key angular metrics such as Maximum View Angle (MVA°) and Individual Property View Angle (IPVA°). The resulting viewsheds are expressed not simply as binary visibility maps, but as visual fields that interact with human-defined land use classifications and physical landscape features. Integrating land use and land cover data provides essential context, revealing how views are mediated by zoning, development, vegetation, and post-hurricane changes to shoreline morphology.
Cartography is essential to this work, not just for its analytical rigor but also for its ability to translate complexity into understanding. Each viewshed is designed as a spatial model and a visual narrative that speaks to planners, policymakers, property owners, and the public. A suite of cartographic outputs—including oriented imagery datasets, interactive web maps, and shoreline-focused visibility diagrams—demonstrates how changes to coastal viewscapes and adjacent land uses can be measured and meaningfully visualized in both plan and perspective views.
This research is presented at the International Cartographic Conference to support the International Cartographic Association’s (ICA) mission of fostering the understanding, sharing, and application of cartographic knowledge. It contributes to key ICA themes of sustainable development, spatial justice, and educational innovation. It shows how thoughtful cartographic design can guide land use decisions and shape public conversation in disaster-impacted regions.
Web map and project viewer: https://jderekito.github.io/ValidateViewsheds.html
Journal article
Published 10/22/2025
SN computer science, 6, 8, 921
Forest disturbance due to natural events, such as wildfires, represents an increasing global challenge that demands advanced analytical methods for effective detection and mitigation. To this end, integrating satellite imagery with deep learning (DL) has emerged as a powerful approach for forest wildfire detection; however, its practical use remains limited by the scarcity of large, well-labeled satellite imagery datasets. In this study, we address this issue by presenting the California Wildfire GeoImaging Dataset (CWGID), a high-resolution bi-temporal collection of over 100,000 labeled RGB "before-" and and "-after" Sentinel-2 wildfire satellite image pairs. We build and label the dataset programmatically, significantly reducing the time and manual effort usually required to create labeled datasets suitable for DL applications. Our methods include data acquisition from authoritative sources, systematic preprocessing, and an initial analysis using three pre-trained Convolutional Neural Network (CNN) architectures for two classification tasks consisting, respectively, in labeling unitemporal and bitemporal inputs as damaged or not damaged by fire. Our results show that using bi-temporal imagery as input during model training and testing can result in improved model performance, with the Early Fusion (EF) EfficientNet-B0 model achieving the highest wildfire detection accuracy of over 92%. These findings suggest that the CWGID and the streamlined programmatic methodology used to build it may help address the scarcity of labeled data for DL-based forest wildfire detection, while providing a scalable resource that could support other DL applications in environmental monitoring.
Journal article
A multi-faceted approach to analyzing historical police logs: a research note
Published 06/18/2025
Policing & society, 35, 5, 712 - 721
This research note provides an exploratory analysis of a remarkable - and broadly available - set of documents from the early twentieth century. This preliminary study examined one month of police call logs and warrant books from Pensacola, Florida, in December 1912. Combining perspectives from history, geography, and police practice, the authors integrated these records with digitised spatial data using Geographic Information System (GIS). The analysis revealed significant racial disparities in arrest patterns, unexpected temporal trends in policing activity, and compelling spatial concentrations of law enforcement interactions. This project suggests the potential of applying modern analytical techniques to historical police datasets in order to yield meaningful insights into the evolution of policing practices and their societal impacts. It highlights the wealth of untapped historical arrest records available for similar studies across the United States, suggesting avenues for future comparative research that bridges historical analysis with contemporary policing concerns.
Journal article
Geography education and racial literacy
Published 10/01/2023
Teaching geography, 48, 3, 97 - 99
Even more than asserting that geography matters (in the sense that the unique features of place and spatial context directly shape the outcomes of general ('universal') economic, social and cultural processes) geographers have shown the iterative dynamic of place – not just as a container, but as a process. [...]the apparent neutrality of categorisations which we have used 'objectively' to classify place in the past is now understood to be false: terms like 'inner city' are not descriptively neutral, but carry connotation and meaning which need to be examined with care: because the way in which racialised perspectives become sedimented in our minds is the way in which racism becomes normalised. Teaching geography with racial literacy In summary, our argument is that teachers' racial literacy involves a body of knowledge and the ability to understand how race and racism work in shaping society – and that for geography teachers, this has implications for their curriculum making. In other words, through neglecting the unequal distribution of power, diverse perspectives and the agency of ordinary people, geographical patterns and processes will appear to students as natural, inevitable, logical – and therefore legitimate. [...]a great advance in school geography would be more overtly to recognize the historicity of geographical patterns – the history behind the geography. Principles To conclude, we outline six principles that, we argue, underpin a racially literate geography curriculum: * People and places are dynamic and always changing as a result of the interplay of economic, social, cultural, political and environmental processes; furthermore, these do not operate neutrally and in the same way for all people. * Geographical facts are nearly always contingent: they are selected, prioritized and can frequently be contested; and there is nearly always another way of looking at them (the 'danger of a single story' – Biddulph, 2011). * Human agency is rarely unfettered and frequently involves disagreement, tension and struggle: human processes always involve politics (the process by which limited resources are allocated). * Race is not a biological fact, attribute or phenomenon, but it is a real and 'felt' social construction that both produces and is a product of economic, environmental, political and social processes that
Abstract
Building Organizational Resiliency and Reliability: Lessons from Wrongful Convictions
Published 01/01/2023
Forensic science international. Synergy, 6, Supplement 1, 100415
American Society of Crime Laboratory Directors (ASCLD) meeting, 2023
Forensic science organizations are high-reliability organizations (HRO’s) that are challenged to produce consistent excellence in a high-risk, high-throughput environment. Inevitably, even well-managed laboratories will produce forensic errors that may undermine public trust and threaten organizational cohesion. An HRO framework will be presented that draws on lessons learned from wrongful convictions and insights from cognitive science to improve the reliability of forensic experts and the resiliency of forensic science organizations.
Forensic errors in wrongful convictions may have many root causes. Much attention has been paid to the relative role of contextual bias, which may influence subjective judgments that are a part of any forensic analysis. That view is lacking in several respects. Expert errors may encompass many other types of bias that may be more important in forensic science organizations. Also, forensic experts may be able to mitigate the effects of contextual bias through training and experience. Finally, interventions specifically tailored to contextual bias may increase the likelihood of other causes of errors. Thus, it is important that forensic science leaders consider a broad range of possible factors related to forensic errors and cognitive science.
Case studies of wrongful convictions provide useful insight into the scope of expert errors related to forensic evidence and intervention strategies that will mitigate the risk of future errors. Importantly, causative factors can be evaluated using the full breadth of insights from cognitive science, which includes elements related to the recruitment and development of experts, successful communication with users of forensic analyses, and organizational development strategies. In this session, case studies will be presented to demonstrate specific lessons from cases in which organizational deficiencies contributed to preventable expert errors. These examples provide key insights into practical interventions that may be considered by forensic science organizations.
More broadly, an HRO framework can be used to build a supportive culture around forensic experts. Typical HRO values include a preoccupation with failure, deference to expertise, reluctance to simplify, sensitivity to operations, and accountability. These values align with specific, proven interventions—such as testimony review and quality assurance—that are closely connected to forensic errors in wrongful convictions. Other interventions—such as linear sequential unmasking and blind reviews—can be designed to maximize impact within specific organizational contexts. The HRO framework has utility as a proactive model to identify and assess effective improvements in policy and practice. It also has utility as a reactive model to establish root causes of errors and promote positive, evidence-based change. The HRO framework can assist forensic science organizations to navigate the difficult environment that arises when expert errors contribute to miscarriages of justice.
This session is based in part on a complete analysis of wrongful convictions related to false or misleading forensic evidence. Building on that foundation, the session provides key insights into specific intervention strategies to improve forensic science reliability.
Journal article
Lights-Out After Hurricane Michael: A Spatially Informed Bayesian Network Analysis of Power Outages
Published 06/22/2022
Southeastern geographer, 62, 2, 128 - 146
Historically, dense vegetation cover near buildings has caused power disruptions during weather phenomena. These types of severe storms impact the coast of Florida each year. However, challenges exist for obtaining both power outage data and calculating the impact of tree cover. NASA's Nighttime Lights, Black Marble, VNP46 product is utilized to analyze the natural and built environments. One aspect of the built environment that can be mapped with the Black Marble data is the megawatts of electricity used by the electrical power grid based on the magnitude of emitted nighttime light energy. This paper discusses using Black Marble data and other landscape variables within a probabilistic model to examine spatial patterns and map electricity outages with Bayesian networks. The research results indicate a high probability of a significant power outage when dense vegetation is present, but nuances in our natural and built environments like electric substations and land cover type alter the chance of reducing energy emissions.
Book
Participatory Mapping of Territoriality Across Florida’s Beaches
Published 01/01/2022
This book offers a theoretical and practical exploration of the beach as space and places unique disciplinary lenses (Political Science and Geography). If we accept that what one possesses, one has a claim to, becoming property, then how that possession is enforced, socially, makes all the difference in defining what constitutes territoriality. Morgan and his colleagues have carried out various studies and applied various methods to study the developing coast of Florida. From these efforts, we compare the different regions of the State (e.g., Florida panhandle vs. South Florida) in terms of local beach culture and economics to unpack the topic of tension between beach property and access using firsthand accounts in many cases. This book approaches the complex topic of territoriality on Florida’s beaches from multiple perspectives but related methods involving time geography, a public space index, participatory mapping/cartography, and transboundary viewsheds. This analysis illustrates the fruitfulness of conceptualizations of property that are complex, multiplicative, and evolving. It calls for a recognition of human rights to the commons -- both now and in the future. And it highlights the constructed nature of public space - as a space that provides meaning through bodily performance and encounter.
Journal article
Exploratory Bivariate and Multivariate Geovisualizations of a Social Vulnerability Index
Published 03/17/2020
Cartographic perspectives, 2020, 95, 5 - 23
In the United States, the Centers for Disease Control and Prevention (CDC) is the national agency that conducts and supports public health research and practice. Among the CDC’s many achievements is the development of a social vulnerability index (SVI) to aid planners and emergency responders when identifying vulnerable segments of the population, especially during natural hazard events. The index includes an overall social vulnerability ranking as well as four individual themes: socioeconomic, household composition & disability, ethnicity & language, and housing & transportation. This makes the SVI dataset multivariate, but it is typically viewed via maps that show one theme at a time. This paper explores a suite of cartographic techniques that can represent the SVI beyond the univariate view. Specifically, we recommend three techniques: (1) bivariate mapping to illustrate overall vulnerability and population density, (2) multivariate mapping using cartographic glyphs to disaggregate levels of the four vulnerability themes, and (3) visual analytics using Euler diagrams to depict overlap between the vulnerability themes. The CDC’s SVI, and by extension, vulnerability indices in other countries, can be viewed in a variety of cartographic forms that illustrate the location of vulnerable groups of society. Viewing data from various perspectives can facilitate the understanding and analysis of the growing amount and complexity of data.
Journal article
Published 02/2020
Building and environment, 169, 106542
Passive design and landscape variables (e.g., rooftop albedo and shading vegetation) are frequently proposed as important green building techniques. However, there is a paucity of literature demonstrating their large-scale effects with empirically measured building stocks and observed residential energy consumption. This paper uses a spatial Durbin error model (SDEM) approach to test the effects of passive building performance indicators, such as orientation, albedo, and NDVI, on city-wide summertime household billed energy data in Gainesville, FL. Our findings suggest that vegetation and albedo reduce energy consumption, but our model did not produce similar significant results for building orientation and footprint compactness. These results provide evidence to suggest high albedo roofing and purposeful shading are important energy conservation strategies for energy-efficient residential neighborhoods.
•This study uses a spatial Durbin error model (SDEM) to test the effects of passive design elements on energy consumption patterns in Gainsville, FL.•NDVI, as a proxy for near home vegetation and shade, has significant direct and indirect (spillover) effects on reducing summertime energy consumption.•Rooftop albedo (reflectivity) has significant direct effects on reducing summertime energy consumption, even in a context where there are few “high albedo” roofs.•Roof-top albedo is emperically correlated with reductions in energy consumption in our study sample.•Building codes may discourage maximizing energy reductions from passive design by setting minimum standards which may lead to offsetting.
Journal article
Operationalizing Trumbo’s Principles of Bivariate Choropleth Map Design
Published 01/11/2020
Cartographic perspectives, 2019, 94, 5 - 24
Trumbo’s (1981) ideas on bivariate choropleth design have been underexplored and underutilized. He noted that effective map design (including color selection) is directly informed by the intended goal or use of the map (i.e., what questions might the map answer), and he identified three common spatial relationships that can be displayed by a bivariate choropleth: inverse relationships, a range of one variable within another, and direct relationships. Each is best suited to answering different map readers’ questions. Trumbo also suggested sample color palettes to focus the map reader’s attention on pertinent data. In consultation with Trumbo, we extended his ideas, first by creating focal models that illustrate his three spatial relationships. We then constructed sample maps to examine each of the focal models, and finally compared each model by mapping the same two data sets (of obesity and inactivity). We investigated the visual differences in each of the resulting maps, and asked spatial questions regarding the relationships between obesity and inactivity. Our work validates Trumbo’s ideas on bivariate choropleth map design, and we hope our focal models guide cartographers towards making color choices by linking their map purpose to the appropriate focal model.