4 research outputs found

    Data Warehousing and OLAP in a Cluster Computer Environment

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    Algorithms and Data Structures for Automated Change Detection and Classification of Sidescan Sonar Imagery

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    During Mine Warfare (MIW) operations, MIW analysts perform change detection by visually comparing historical sidescan sonar imagery (SSI) collected by a sidescan sonar with recently collected SSI in an attempt to identify objects (which might be explosive mines) placed at sea since the last time the area was surveyed. This dissertation presents a data structure and three algorithms, developed by the author, that are part of an automated change detection and classification (ACDC) system. MIW analysts at the Naval Oceanographic Office, to reduce the amount of time to perform change detection, are currently using ACDC. The dissertation introductory chapter gives background information on change detection, ACDC, and describes how SSI is produced from raw sonar data. Chapter 2 presents the author\u27s Geospatial Bitmap (GB) data structure, which is capable of storing information geographically and is utilized by the three algorithms. This chapter shows that a GB data structure used in a polygon-smoothing algorithm ran between 1.3 – 48.4x faster than a sparse matrix data structure. Chapter 3 describes the GB clustering algorithm, which is the author\u27s repeatable, order-independent method for clustering. Results from tests performed in this chapter show that the time to cluster a set of points is not affected by the distribution or the order of the points. In Chapter 4, the author presents his real-time computer-aided detection (CAD) algorithm that automatically detects mine-like objects on the seafloor in SSI. The author ran his GB-based CAD algorithm on real SSI data, and results of these tests indicate that his real-time CAD algorithm performs comparably to or better than other non-real-time CAD algorithms. The author presents his computer-aided search (CAS) algorithm in Chapter 5. CAS helps MIW analysts locate mine-like features that are geospatially close to previously detected features. A comparison between the CAS and a great circle distance algorithm shows that the CAS performs geospatial searching 1.75x faster on large data sets. Finally, the concluding chapter of this dissertation gives important details on how the completed ACDC system will function, and discusses the author\u27s future research to develop additional algorithms and data structures for ACDC

    Sistemi a colonne per data warehouse

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    I sistemi per data warehouse commerciali più diffusi sono basati sulla tecnologia relazionale con la memorizzazione dei dati per righe. Questa implementazione si dimostra inadatta alle sigenze delle applicazioni di analisi multidimensionale di grandi quantità di dati in modo interattivo. Si presenta una rassegna di alcune recenti proposte di sistemi per data warehouse che prevedono la memorizzazione dei dati per colonne, un approccio che migliora le prestazioni di questi sistemi rendendoli più efficienti e scalabili. Questa soluzione comporta una revisione di diversi aspetti della gestione dei dati e dell'elaborazione delle interrogazioni con l'ausilio di specializzate strutture dati e tecniche di ottimizzazione
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