Schreck, Tobias

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An Image-Based Approach to Visual Feature Space Analysis

2008, Schreck, Tobias, Schneidewind, Jörn, Keim, Daniel A.

Methods for management and analysis of non-standard data often rely on the so-called feature vector approach. The technique describes complex data instances by vectors of characteristic numeric values which allow to index the data and to calculate similarity scores between the data elements. Thereby, feature vectors often are a key ingredient to intelligent data analysis algorithms including instances of clustering, classification, and similarity search algorithms. However, identification of appropriate feature vectors for a given database of a given data type is a challenging task. Determining good feature vector extractors usually involves benchmarks relying on supervised information, which makes it an expensive and data dependent process. In this paper, we address the feature selection problem by a novel approach based on analysis of certain feature space images. We develop two image-based analysis techniques for the automatic discrimination power analysis of feature spaces. We evaluate the techniques on a comprehensive feature selection benchmark, demonstrating the effectiveness of our analysis and its potential toward automatically addressing the feature selection problem.

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Content-Based 3D Object Retrieval

2007, Bustos Cárdenas, Benjamin Eugenio, Keim, Daniel A., Saupe, Dietmar, Schreck, Tobias

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Foundations of 3D Digital Libraries : current approaches and urgent research challenges

2007, Bustos Cárdenas, Benjamin Eugenio, Fellner, Dieter W., Havemann, Sven, Keim, Daniel A., Saupe, Dietmar, Schreck, Tobias

3D documents are an indispensable data type in many important application domains such as Computer Aided Design, Simulation and Visualization, and Cultural Heritage, to name a few. The 3D document type can represent arbitrarily complex information by composing geometrical, topological, structural, or material properties, among others. It often is integrated with meta data and annotation by the various application systems that produce, process, or consume 3D documents. We argue that due to the inherent complexity of the 3D data type in conjunction with and imminent pervasive usage and explosion of available content, there is pressing need to address key problems of the 3D data type. These problems need to be tackled before the 3D data type can be fully supported by Digital Library technology in the sense of a generalized document, unlocking its full potential. If the problems are addressed appropriately, the expected benefits are manifold and may lead to radically improved production, processing, and consumption of 3D content.

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DelosDLMS - the Integrated DELOS Digital Library Management System

2007, Agosti, Maristella, Berretti, Stefano, Brettlecker, Gert, Bimbo, Alberto del, Ferro, Nicola, Fuhr, Norbert, Keim, Daniel A., Klas, Claus-Peter, Lidy, Thomas, Milano, Diego, Norrie, Moira, Ranaldi, Paola, Rauber, Andreas, Schek, Hans-Jörg, Schreck, Tobias, Schuldt, Heiko, Signer, Beat, Springmann, Michael

DelosDLMS is a prototype of a next-generation Digital Library (DL) management system. It is realized by combining various specialized DL functionalities provided by partners of the DELOS network of excellence. Currently, DelosDLMS combines text and audio-visual searching, offers new information visualization and relevance feedback tools, provides novel interfaces, allows retrieved information to be annotated and processed, integrates and processes sensor data streams, and finally, from a systems engineering point of view, is easily configured and adapted while being reliable and scalable. The prototype is based on the OSIRIS/ISIS platform, a middleware environment developed by ETH Zürich and now being extended at the University of Basel.

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Towards Automatic Feature Vector Optimization for Multimedia Applications

2008, Schreck, Tobias, Fellner, Dieter W., Keim, Daniel A.

We systematically evaluate a recently proposed method for unsupervised discrimination power analysis for feature selection and optimization in multimedia applications. A series of experiments using real and synthetic benchmark data is conducted, the results of which indicate the suitability of the method for unsupervised feature selection and optimization. We present an approach for generating synthetic feature spaces of varying discrimination power, modeling main characteristics from real world feature vector extractors. A simple, yet powerful visualization is used to communicate the results of the automatic analysis to the user.

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Multi-Resolution Techniques for Visual Exploration of Large Time-Series Data

2007, Hao, Ming C., Dayal, Umeshwar, Keim, Daniel A., Schreck, Tobias

Time series are a data type of utmost importance in many domains such as business management and service monitoring. We address the problem of visualizing large time-related data sets which are difficult to visualize effectively with standard techniques given the limitations of current display devices. We propose a framework for intelligent time- and data-dependent visual aggregation of data along multiple resolution levels. This idea leads to effective visualization support for long time-series data providing both focus and context. The basic idea of the technique is that either data-dependent or application-dependent, display space is allocated in proportion to the degree of interest of data subintervals, thereby (a) guiding the user in perceiving important information, and (b) freeing required display space to visualize all the data. The automatic part of the framework can accommodate any time series analysis algorithm yielding a numeric degree of interest scale. We apply our techniques on real-world data sets, compare it with the standard visualization approach, and conclude the usefulness and scalability of the approach.

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DelosDLMS - The integrated DELOS digital library management system

2007, Agosti, Maristella, Berretti, Stefano, Brettlecker, Gert, Del Bimbo, Alberto, Ferro, Nicola, Fuhr, Norbert, Keim, Daniel A., Klas, Claus-Peter, Lidy, Thomas, Milano, Diego, Norrie, Moira C., Ranaldi, Paola, Rauber, Andreas, Schek, Hans-Jörg, Schreck, Tobias, Schuldt, Heiko, Signer, Beat, Springmann, Michael

DelosDLMS is a prototype of a next-generation Digital Library (DL) management system. It is realized by combining various specialized DL functionalities provided by partners of the DELOS network of excellence. Currently, DelosDLMS combines text and audio-visual searching, offers new information visualization and relevance feedback tools, provides novel interfaces, allows retrieved information to be annotated and processed, integrates and processes sensor data streams, and finally, from a systems engineering point of view, is easily configured and adapted while being reliable and scalable. The prototype is based on the OSIRIS/ISIS platform, a middleware environment developed by ETH Zürich and now being extended at the University of Basel.

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A Visual Analysis of Multi-Attribute Data Using Pixel Matrix Displays

2007-01-28, Hao, Ming C., Dayal, Umeshwar, Keim, Daniel A., Schreck, Tobias

Charts and tables are commonly used to visually analyze data. These graphics are simple and easy to understand, but charts show only highly aggregated data and present only a limited number of data values while tables often show too many data values. As a consequence, these graphics may either lose or obscure important information, so different techniques are required to monitor complex datasets. Users need more powerful visualization techniques to digest and compare detailed multi-attribute information to analyze the health of their business. This paper proposes an innovative solution based on the use of pixel-matrix to represent transaction-level information within graphics. With pixel-matrixes, users can visualize areas of importance at a glance, a capability not provided by common charting techniques. Our solutions are based on colored pixel-matrixes, which are used in (1) charts for visualizing data patterns and discovering exceptions, (2) tables for visualizing correlations and finding root-causes, and (3) time series for visualizing the evolution of long-running transactions. The solutions have been applied with success to product sales, Internet network performance analysis, and service contract applications demonstrating the benefits of our method over conventional graphics. The method is especially useful when detailed information is a key part of the analysis.

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Semiautomatic benchmarking of feature vectors for multimedia retrieval

2007, Schreck, Tobias, Schneidewind, Jörn, Keim, Daniel A., Ward, Matthew O., Tatu, Andrada

Modern Digital Library applications store and process massive amounts of information. Usually, this data is not limited to raw textual or numeric data - typical applications also deal with multimedia data such as images, audio, video, or 3D geometric models. For providing effective retrieval functionality, appropriate meta data descriptors that allow calculation of similarity scores between data instances are requires. Feature vectors are a generic way for describing multimedia data by vectors formed from numerically captured object features. They are used in similarity search, but also, can be used for clustering and wider multimedia analysis applications. Extracting effective feature vectors for a given data type is a challenging task. Determining good feature vector extractors usually involves experimentation and application of supervised information. However, such experimentation usually is expensive, and supervised information often is data dependent. We address the feature selection problem by a novel approach based on analysis of certain feature space images. We develop two image-based analysis techniques for the automatic discrimination power analysis of feature spaces. We evaluate the techniques on a comprehensive feature selection benchmark, demonstrating the effectiveness of our analysis and its potential toward automatically addressing the feature selection problem.

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Methoden und Benutzerschnittstellen für effektives Retrieval in 3D-Datenbanken

2007, Bustos Cárdenas, Benjamin Eugenio, Keim, Daniel A., Saupe, Dietmar, Schreck, Tobias, Tatu, Andrada

3D Objekte sind ein wichtiger Typ Multimedia Daten mit einer Reihe vielversprechender Anwendungsmöglichkeiten etwa in der industriellen Produktion, in Simulation, Unterhaltung und Visualisierung. Die Definition von Ähnlichkeit zwischen 3D Objekten und die Implementierung von entsprechenden Ähnlichkeitssuchalgorithmen sind interessant für den Einsatz in 3D-Datenbanksystemen, repräsentieren aber gleichzeitig schwierige Probleme. In dieser Arbeit stellen wir Methoden dar, um effektives Retrieval in 3D-Datenbanken zu realisieren. Wir besprechen zudem Methoden, um Ergebnisse von Ähnlichkeitssuchanfragen sowie ganze 3D Objekträume visuell zu analysieren.