5,914 research outputs found

    Error sources in the analysis of crowdsourced spatial tracking data

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    Governments are increasingly interested in the use of crowdsourced spatial tracking data to gain information on the travel behaviour of their citizens. To improve the reliability of reporting in such mobility studies, this paper systematically analyses the propagation of errors from low level operations to high level indicators, such as the modal split and travelled distances. We find that most existing metrics in literature are insufficient to fully quantify this evolution of data quality. The propagation channels are presented schematically and a new approach to quantify the spatial data quality at the end of each processing stage is proposed. This procedure, within the context of Smart Cities, ensures that the data analytics and resulting changes in policy are sufficiently substantiated by credible and reliable information

    Video Surveillance-Based Intelligent Traffic Management in Smart Cities

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    Visualization of video is considered as important part of visual analytics. Several challenges arise from massive video contents that can be resolved by using data analytics and consequently gaining significance. Though rapid progression in digital technologies resulted in videos data explosion that incites the requirements to create visualization and computer graphics from videos, a state-of-the-art algorithm has been proposed in this chapter for 3D conversion of traffic video contents and displaying on Google Maps. Time stamped visualization based on glyph is employed efficiently in surveillance videos and utilized for event detection. This method of visualization can possibly decrease the complexity of data, having complete view of videos from video collection. The effectiveness of proposed system has shown by obtaining numerous unprocessed videos and algorithm is tested on these videos without concerning field conditions. The proposed visualization technique produces promising results and found effective in conveying meaningful information while alleviating the need of searching exhaustively colossal amount of video data

    Shifting Spatialities of Power: The Case of Australasian Aviation

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    This paper explores how different modalities, spatialities and scales of power operate in a geopolitical context. By tracing the dynamic and shifting economic geographies of state and firm power in the events leading up to the collapse of a major Australian firm, Ansett Airlines, it reveals the difference that place and position make to the creation and use of power. The paper stresses agents’ relational positioning, their ‘places’ in multiple networks of association and the ways in which their past actions and visions of the future condition their strategic options. The paper contextualises the workings of power and explores how power relationships are re-configured in specific contested events. It concludes that power cannot be separated from the spatial and temporal dimensions of actual contexts, from actor’s positions in contexts, or from their strategic objective

    A Neural Model of Visually Guided Steering, Obstacle Avoidance, and Route Selection

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    A neural model is developed to explain how humans can approach a goal object on foot while steering around obstacles to avoid collisions in a cluttered environment. The model uses optic flow from a 3D virtual reality environment to determine the position of objects based on motion discotinuities, and computes heading direction, or the direction of self-motion, from global optic flow. The cortical representation of heading interacts with the representations of a goal and obstacles such that the goal acts as an attractor of heading, while obstacles act as repellers. In addition the model maintains fixation on the goal object by generating smooth pursuit eye movements. Eye rotations can distort the optic flow field, complicating heading perception, and the model uses extraretinal signals to correct for this distortion and accurately represent heading. The model explains how motion processing mechanisms in cortical areas MT, MST, and VIP can be used to guide steering. The model quantitatively simulates human psychophysical data about visually-guided steering, obstacle avoidance, and route selection.Air Force Office of Scientific Research (F4960-01-1-0397); National Geospatial-Intelligence Agency (NMA201-01-1-2016); National Science Foundation (NSF SBE-0354378); Office of Naval Research (N00014-01-1-0624

    Trajectory Reconstruction and Mobility Pattern Analysis Based on Call Detail Record Data

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    Tehnoloogiad, mis kasutavad geograafilisi andmeid, on muutunud meie igapĂ€evaelu tĂ€htsaks osaks. TĂ€nu sellele on kasvanud asukoha andmetemassiliine salvestamine ja kaevandamine. Seni on GPS tehnoloogiad olnud pĂ”hiliseks geograafiliste andmete kogumismeetodiks. Sellega paralleelselt on populaarsust kogunud mobiiliandmete kasutamine positsiooni tuvastamiseks ja liikumismustrite analĂŒĂŒsimiseks. Mobiiliandmete (CDR) pĂ”hjal trajektooride taastamiseks on vajalik meetodite kohendamine selleks, et tulemused oleksid korrektsed. TĂ€nu sellele, et telekommunikatsiooni ettevĂ”tted on alustanud suuremat koostööd ja hakanud CDR-andmeid jĂ€rjest rohkem avalikustama, on mobiiliandmete kasutamine mitmetel aladel suurenenud. Töödeldud mobiiliandmed aitavad anda ĂŒlevaadet rahvastiku liikumisest erinevates ulatustes. Samal ajal on trajektooride taastamine CDR-andmetest kohati raskendatud vĂ”rreldes GPS-andmetega. Suurimaks probleemiks on algus- ja lĂ”pp-positsioonide asukoha mÀÀramine, mis on veelgi enam raskendatud juhul kui objekt liigub.Selle lĂ”putöö eesmĂ€rgiks on trajektooride taastamine anonĂŒĂŒmsete kasutajatepoolt genereeritud CDR-andmete pĂ”hjal. Tulemuste valideerimine GPS-andmetega, mis on loodud paralleelselt mobiiliandmetega ning on vajalik selleks, et mÀÀrata saadud trajektooride tĂ€psust. Loodud trajektoore saab kasutada objektide, sealhulgas ka inimeste, liikumismustrite analĂŒĂŒsimiseks ja rahvastiku paiknemise tuvastamiseks, mis aitab linnade planeerimisel ja infrastruktuuride optimeerimisel. LĂ”putöö vĂ€ljunditeks on trajektooride taastamine ja tĂ€psuse analĂŒĂŒsimine, lisaks sellele inimese liikumismudelite tuvastamine ja tihedamini kĂŒlastatavate asukohtade identifitseerimine nagu nĂ€iteks kodu, töökoht ja poed.Up until now, GPS data has been greatly used for collecting highlyprecise locational data from moving objects including humans. In contrast, mobile phone data is becoming more and more popular in the last few years. The usage of mobile phone data, that is also known as CDR data, has many benefits over the widely used GPS. This means that the methods used for example in GPS trajectory reconstruction, need to have modifications made be compatible with CDR data.The fact that telecommunication companies have started to cooperate moreand share the CDR data with the public is also a boost to the usage of CDRdata. The processed and analyzed CDR data can be used to get an overview ofcrowd movement in different scales, for example traveling inside a city as opposed to between countries. Extracting trajectories from CDR data has numerous complications.This is due to the fact that the data might not be continuous anddiscovering of the starting point of the object in motion is complicated.The goal of this thesis is to use CDR data in the reconstruction of trajectoriesmade by an anonymous user and to validate the results with GPS data generated in parallel to the CDR data. Reconstructed trajectories can be used for movement analysis and population displacement and would help city planning by optimizing the infrastructures.Outcomes of this thesis are the reconstructed trajectories based on CDR dataand the precisions of final paths. Also, the frequency of CDR events is analyzedin addition to distance distribution. After that the areas that the user visits most frequently are extracted, such as home and work locations
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