2021
DOI: 10.1007/s42001-021-00107-x
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Classifying crime places by neighborhood visual appearance and police geonarratives: a machine learning approach

Abstract: The complex interrelationship between the built environment and social problems is often described but frequently lacks the data and analytical framework to explore the potential of such a relationship in different applications. We address this gap using a machine learning (ML) approach to study whether street-level built environment visuals can be used to classify locations with high-crime and lower-crime activities. For training the ML model, spatialized expert narratives are used to label different location… Show more

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Cited by 14 publications
(18 citation statements)
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References 90 publications
(67 reference statements)
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“…Adding in a simultaneously recorded commentary, often described as a geonarrative, further enriches these data with context. As a result, multiple topics including health, crime [ 12 ], and disasters have been studied using this approach both within the United States and in various challenging oversea environments [ 3 , 13 15 ]. The challenge has always been that the associated software, including spatial data processing and analysis tools have lagged behind the technological and methodological advances.…”
Section: Related Workmentioning
confidence: 99%
See 1 more Smart Citation
“…Adding in a simultaneously recorded commentary, often described as a geonarrative, further enriches these data with context. As a result, multiple topics including health, crime [ 12 ], and disasters have been studied using this approach both within the United States and in various challenging oversea environments [ 3 , 13 15 ]. The challenge has always been that the associated software, including spatial data processing and analysis tools have lagged behind the technological and methodological advances.…”
Section: Related Workmentioning
confidence: 99%
“…In the proposed platform street level images were used as a data source to search for localized detail [ 12 , 23 25 ]. The images were segmented with machine learning (ML) tools and the identified semantic categories (e.g., greenery, building, road, etc.)…”
Section: Related Workmentioning
confidence: 99%
“…An ontology is a template defining and representing entities, ideas, and events, with all their interdependent properties and relations, according to a system of categories (i.e., flood resilience in this project). To create such a knowledge graph, there are many technical challenges that can be addressed through AI innovations in computer vision, natural language processing, and geographic information system (Amiruzzaman et al, 2021;Ye et al, 2021). Massive resilience relevant information can reside in different forms of data types, such as documents and images.…”
Section: Knowledge Graphmentioning
confidence: 99%
“…In a AI-ML study, VLFeat was described as a library of CV algorithms used to undertake quick prototyping, the human posture may be identi ed using face detection/human recognition [7]. ML is a technique that allows a computer system to improvise from prior occurrences without having to be explicitly coded [8] and ML comprehends the exact design and frameworks [9]. Various crimes and their underlying nature appear to be unpredictable, but ML helps with pattern recognition [10] and NLP approaches using CV for information modelling.…”
Section: Introductionmentioning
confidence: 99%