3,656 research outputs found

    Query management in a sensor environment

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    Traditional sensor network deployments consisted of fixed infrastructures and were relatively small in size. More and more, we see the deployment of ad-hoc sensor networks with heterogeneous devices on a larger scale, posing new challenges for device management and query processing. In this paper, we present our design and prototype implementation of XSense, an architecture supporting metadata and query services for an underlying large scale dynamic P2P sensor network. We cluster sensor devices into manageable groupings to optimise the query process and automatically locate appropriate clusters based on keyword abstraction from queries. We present experimental analysis to show the benefits of our approach and demonstrate improved query performance and scalability

    Semantic Modeling of Analytic-based Relationships with Direct Qualification

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    Successfully modeling state and analytics-based semantic relationships of documents enhances representation, importance, relevancy, provenience, and priority of the document. These attributes are the core elements that form the machine-based knowledge representation for documents. However, modeling document relationships that can change over time can be inelegant, limited, complex or overly burdensome for semantic technologies. In this paper, we present Direct Qualification (DQ), an approach for modeling any semantically referenced document, concept, or named graph with results from associated applied analytics. The proposed approach supplements the traditional subject-object relationships by providing a third leg to the relationship; the qualification of how and why the relationship exists. To illustrate, we show a prototype of an event-based system with a realistic use case for applying DQ to relevancy analytics of PageRank and Hyperlink-Induced Topic Search (HITS).Comment: Proceedings of the 2015 IEEE 9th International Conference on Semantic Computing (IEEE ICSC 2015

    mSpace meets EPrints: a Case Study in Creating Dynamic Digital Collections

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    In this case study we look at issues involved in (a) generating dynamic digital libraries that are on a particular topic but span heterogeneous collections at distinct sites, (b) supplementing the artefacts in that collection with additional information available either from databases at the artefact's home or from the Web at large, and (c) providing an interaction paradigm that will support effective exploration of this new resource. We describe how we used two available frameworks, mSpace and EPrints to support this kind of collection building. The result of the study is a set of recommendations to improve the connectivity of remote resources both to one another and to related Web resources, and that will also reduce problems like co-referencing in order to enable the creation of new collections on demand

    Forensic Data Properties of Digital Signature BDOC and ASiC-E Files on Classic Disk Drives

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    KĂ€esolevas magistritöös vaadeldakse BDOC ja ASiC-E digitaalselt allkirjastatud dokumendikonteinerite sisu ning kirjeldatakse nende huvipakkuvaid omadusi. Teatava hulga nĂ€idiskonteinerite vaatlemise jĂ€rel pakub autor vĂ€lja faili pĂ€ise ja faili jaluse kombinatsiooni (signatuuri), mis oluliselt parandab nimetatud failide kustutatud olekust sihitud taastamist kĂŒlgnevatest klastritest NTFS vormindatud tihendamata kettal, vĂ”ttes arvesse klassikalise kĂ”vaketta geomeetriat. Ühtlasi kirjeldab autor kohtuekspertiisi koha pealt tĂ€hendust omavaid andmeid ZIP kohaliku faili pĂ€ises ja keskkataloogi kirjes, XML signatuuris ja ASN.1 kodeeritud kihtides ning nende kĂ€ttesaamise algoritmi. Nendele jĂ€reldustele tuginedes loob autor Phytoni skripte ja viib lĂ€bi mitmeid teste failide taastamiseks faili signatuuri jĂ€rgi ning huvipakkuvate andmete vĂ€ljavĂ”tmiseks. Teste viiakse lĂ€bi teatava valiku failide ĂŒle ja tulemusi vĂ”rreldakse mitme kohtuekspertiisis laialt kasutatava peavoolu töökeskkonnaga, samuti mĂ”ningate andmetaaste tööriistadega. LĂ”puks testitakse magistritöö kĂ€igus pakutud digitaalselt allkirjastatud dokumentide taastamiseks mĂ”eldud signatuuri ja andmete vĂ€ljavĂ”tmise algoritmi suurel hulgal avalikust dokumendiregistrist pĂ€rit kehtivate dokumentidega, mis saadi kĂ€tte spetsiaalselt selleks kirjutatud veebirobotiga. Nimetatud teste viiakse lĂ€bi dokumentide ĂŒle, mille hulgas on nii digitaalselt allkirjastatud dokumente kui ka teisi, nendega struktuurilt sarnaseid dokumente.This thesis reviews the contents and observes certain properties of digitally signed documents of BDOC and ASiC-E container formats. After reviewing a set of sample containers, the author comes up with a header and footer combination (signature) significantly improving pinpointed carving-based recovery of those files from a deleted state on NTFS formatted uncompressed volumes in contiguous clusters, taking into account the geometry of classic disk drives. The author also describes forensically meaningful attributive data found in ZIP Headers and Central Directory, XML signatures as well as embedded ASN.1 encoded data of the sample files and suggests an algorithm for the extraction of such data. Based on these findings, the author creates scripts in Python and executes a series of tests for file carving and extraction of attributive data. These tests are run over the samples placed into unallocated clusters and the results are compared to several mainstream commercial forensic examination suites as well as some popular data recovery tools. Finally, the author web-scrapes a large number of real-life documents from a government agency’s public document registry. The carving signature and the data-extractive algorithm are thereafter applied on a larger scale and in an environment competitively supplemented with structurally similar containers

    Building a context rich interface to low level sensor data

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    Sensor networks play an important role in our modern information society. These networks are used for a variety of activities in different domains, including traffic monitoring, environmental analysis, transport and personal health. In general, systems generate data in their own format with little or no associated semantics. As a result, data must be managed individually and significant human effort is required to analyze data and develop ad-hoc applications for different end-user requirements. The research presented here proposes a holistic and comprehensive approach to significantly reduce the human effort in analyzing networks of sensors. The goal is to facilitate any form of sensor network, enabling users to combine related semantics with sensor data, and facilitate the end-user transformation of data necessary to provide more complex query expressions, and thus meet the analytical requirements
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