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Physical Sciences and Mathematics Commons™
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- Coastal inundation mapping (1)
- Decision support (1)
- Document Structure (1)
- Document Understanding (1)
- Florida (1)
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- Geographic information science (1)
- Location-based games (1)
- Natural Language Processing (1)
- OpenStreetMap (1)
- Planning (1)
- Pokémon (1)
- Sea level rise (1)
- Section Structure (1)
- Semantic Search (1)
- Semantics (1)
- Storm surge (1)
- User behavior analysis (1)
- Vandalism (1)
- Volunteered geographic information (1)
- Web mapping (1)
Articles 1 - 5 of 5
Full-Text Articles in Physical Sciences and Mathematics
Sea Level Rise Impact Assessment Tool – A Web-Based Application For Community Resilience In Coral Gables, Florida, Levente Juhasz, Hartwig H. Hochmair, Sheyla Aguilar De Santana, Zhaohui J. Fu
Sea Level Rise Impact Assessment Tool – A Web-Based Application For Community Resilience In Coral Gables, Florida, Levente Juhasz, Hartwig H. Hochmair, Sheyla Aguilar De Santana, Zhaohui J. Fu
GIS Center
No abstract provided.
Ai For Archives: Using Facial Recognition To Enhance Metadata, Rebecca Bakker, Kelley Rowan, Liting Hu, Boyuan Guan, Pinchao Liu, Zhongzhou Li, Ruizhe He, Christine Monge
Ai For Archives: Using Facial Recognition To Enhance Metadata, Rebecca Bakker, Kelley Rowan, Liting Hu, Boyuan Guan, Pinchao Liu, Zhongzhou Li, Ruizhe He, Christine Monge
Works of the FIU Libraries
The goal of this research project was to determine the most effective facial recognition applications that could be implemented into digital archive image collections from libraries, museums, and cultural heritage institutions. Computer scientists and librarians at Florida International University collaborated to conduct qualitative assessments of both face detection and face search using photographs from FIU’s digital collections. Specifically, the facial recognition platforms OpenCV, Face++, and Amazon AWS were analyzed. This project seeks to assist LYRASIS community members who wish to incorporate facial recognition and other artificial intelligence technology into their digital collections and repositories as a method to reduce research …
Adopting Machine Learning At The Fiu Libraries, Jamie Rogers
Adopting Machine Learning At The Fiu Libraries, Jamie Rogers
Works of the FIU Libraries
Over the past five years, the FIU Libraries have developed and implemented various machine learning and AI technologies with the goal of improving discovery and access to materials as well as provide new methods for analysis of content. A sampling of these projects include the development of resource recommendation functionality using machine learning, which is embedded into our digital library system; the use of Microsoft's Cognitive Services AI for transcription of audio files as well as translation of text in over 60 languages; the evaluation of serval AI systems and training data sets for facial recognition in archive photographs; and …
Automatic Learning Of Document Section Structure For Ontology-Based Semantic Search, Deya Banisakher
Automatic Learning Of Document Section Structure For Ontology-Based Semantic Search, Deya Banisakher
FIU Electronic Theses and Dissertations
Modeling natural human behavior in understanding written language is crucial for developing true artificial intelligence. For people, words convey certain semantic concepts. While documents represent an abstract concept---they are collections of text organized in some logical structure, that is, sentences, paragraphs, sections, and so on. Similar to words, these document structures, are used to convey a logical flow of semantic concepts. Machines however, only view words as spans of characters and documents as mere collections of free-text, missing any underlying meanings behind words and the logical structure of those documents.
Automatic semantic concept detection is the process by which the …
Cartographic Vandalism In The Era Of Location-Based Games—The Case Of Openstreetmap And Pokémon Go, Levente Juhasz, Tessio Novack, Hartwig H. Hochmair, Sen Qiao
Cartographic Vandalism In The Era Of Location-Based Games—The Case Of Openstreetmap And Pokémon Go, Levente Juhasz, Tessio Novack, Hartwig H. Hochmair, Sen Qiao
GIS Center
User-generated map data is increasingly used by the technology industry for background mapping, navigation and beyond. An example is the integration of OpenStreetMap (OSM) data in widely-used smartphone and web applications, such as Pokémon GO (PGO), a popular augmented reality smartphone game. As a result of OSM’s increased popularity, the worldwide audience that uses OSM through external applications is directly exposed to malicious edits which represent cartographic vandalism. Multiple reports of obscene and anti-semitic vandalism in OSM have surfaced in popular media over the years. These negative news related to cartographic vandalism undermine the credibility of collaboratively generated maps. Similarly, …