2019
DOI: 10.1109/access.2019.2943845
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An AI Approach to Collecting and Analyzing Human Interactions With Urban Environments

Abstract: Thanks to advances in Internet of Things and crowd-sensing, it is possible to collect vast amounts of urban data, to better understand how citizens interact with cities and, in turn, improve human well-being in urban environments. This is a scientifically challenging proposition, as it requires new methods to fuse objective (heterogeneous) data (e.g. people location trails and sensors data) with subjective (perceptual) data (e.g. the citizens' quality of experience collected through feedback forms). When it co… Show more

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Cited by 6 publications
(2 citation statements)
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“…A smart city also has different levels of granularity—from atomic agents as people and local control systems to networked systems as the power system [ 1 , 27 ], the traffic system [ 28 ], the health system [ 27 , 29 ]. There are many decisions involving data obtained through local sensors and information acquired by communication with other subsystems [ 13 ].…”
Section: Methodsmentioning
confidence: 99%
“…A smart city also has different levels of granularity—from atomic agents as people and local control systems to networked systems as the power system [ 1 , 27 ], the traffic system [ 28 ], the health system [ 27 , 29 ]. There are many decisions involving data obtained through local sensors and information acquired by communication with other subsystems [ 13 ].…”
Section: Methodsmentioning
confidence: 99%
“…In spite of this, there have been no significant contributions in literature to the use of artificial intelligence approaches for tackling uncertainty in sawmill operation planning. Moreover, recent technological advancements on the Internet of Things (IoT), digital sensing, and big data analytics can enable wood production processes to employ advanced techniques already used in other smart manufacturing sectors, such as interactive data analysis based on data collection and real-time analysis to guide the subsequent data collection steps [141], dynamic feature extraction/selection-based algorithms to identify the most important features/operations in production data [142], and big data quality improvement by suppressing noisy features and managing issues related to data collection, data security, data transformation, and storage [143]. Nevertheless, in artificial intelligence and data analytics, it is imperative to practice and test on real systems, as well as to collect training data in sufficient quantities and of high quality.…”
Section: Artificial Intelligence Approachesmentioning
confidence: 99%