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Dive into the research topics where Harlan P. Foote is active.

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Featured researches published by Harlan P. Foote.


ieee visualization | 1998

TOPIC ISLANDS/sup TM/-a wavelet-based text visualization system

Nancy Miller; Pak Chung Wong; Mary Brewster; Harlan P. Foote

We present a novel approach to visualize and explore unstructured text. The underlying technology, called TOPIC-O-GRAPHY/sup TM/, applies wavelet transforms to a custom digital signal constructed from words within a document. The resultant multiresolution wavelet energy is used to analyze the characteristics of the narrative flow in the frequency domain, such as theme changes, which is then related to the overall thematic content of the text document using statistical methods. The thematic characteristics of a document can be analyzed at varying degrees of detail, ranging from section-sized text partitions to partitions consisting of a few words. Using this technology, we are developing a visualization system prototype known as TOPIC ISLANDS to browse a document, generate fuzzy document outlines, summarize text by levels of detail and according to user interests, define meaningful subdocuments, query text content, and provide summaries of topic evolution.


Communications of The ACM | 2003

Organic data memory using the DNA approach

Pak Chung Wong; Kwong Kwok Wong; Harlan P. Foote

For very long-term storage and retrieval, encode information as artificial DNA strands and insert into living hosts. As vectors, bacteria, even some bugs and weeds, might be good for hundreds of millions of years.


ieee symposium on information visualization | 2000

Visualizing sequential patterns for text mining

Pak Chung Wong; Wendy E. Cowley; Harlan P. Foote; Elizabeth Jurrus; James J. Thomas

A sequential pattern in data mining is a finite series of elements such as A/spl rarr/B/spl rarr/C/spl rarr/D where A, B, C, and D are elements of the same domain. The mining of sequential patterns is designed to find patterns of discrete events that frequently happen in the same arrangement along a timeline. Like association and clustering, the mining of sequential patterns is among the most popular knowledge discovery techniques that apply statistical measures to extract useful information from large datasets. As out computers become more powerful, we are able to mine bigger datasets and obtain hundreds of thousands of sequential patterns in full detail. With this vast amount of data, we argue that neither data mining nor visualization by itself can manage the information and reflect the knowledge effectively. Subsequently, we apply visualization to augment data mining in a study of sequential patterns in large text corpora. The result shows that we can learn more and more quickly in an integrated visual data-mining environment.


ieee symposium on information visualization | 2003

Dynamic visualization of transient data streams

Pak Chung Wong; Harlan P. Foote; Dan Adams; Wendy E. Cowley; James J. Thomas

We introduce two dynamic visualization techniques using multidimensional scaling to analyze transient data streams such as newswires and remote sensing imagery. While the time-sensitive nature of these data streams requires immediate attention in many applications, the unpredictable and unbounded characteristics of this information can potentially overwhelm many scaling algorithms that require a full re-computation for every update. We present an adaptive visualization technique based on data stratification to ingest stream information adaptively when influx rate exceeds processing rate. We also describe an incremental visualization technique based on data fusion to project new information directly onto a visualization subspace spanned by the singular vectors of the previously processed neighboring data. The ultimate goal is to leverage the value of legacy and new information and minimize re-processing of the entire dataset in full resolution. We demonstrate these dynamic visualization results using a newswire corpus and a remote sensing imagery sequence.


IEEE Transactions on Visualization and Computer Graphics | 2009

A Novel Visualization Technique for Electric Power Grid Analytics

Pak Chung Wong; Kevin P. Schneider; Patrick S. Mackey; Harlan P. Foote; George Chin; Ross T. Guttromson; James J. Thomas

The application of information visualization holds tremendous promise for the electric power industry, but its potential has so far not been sufficiently exploited by the visualization community. Prior work on visualizing electric power systems has been limited to depicting raw or processed information on top of a geographic layout. Little effort has been devoted to visualizing the physics of the power grids, which ultimately determines the condition and stability of the electricity infrastructure. Based on this assessment, we developed a novel visualization system prototype, GreenGrid, to explore the planning and monitoring of the North American Electricity Infrastructure. The paper discusses the rationale underlying the GreenGrid design, describes its implementation and performance details, and assesses its strengths and weaknesses against the current geographic-based power grid visualization. We also present a case study using GreenGrid to analyze the information collected moments before the last major electric blackout in the Western United States and Canada, and a usability study to evaluate the practical significance of our design in simulated real-life situations. Our result indicates that many of the disturbance characteristics can be readily identified with the proper form of visualization.


IEEE Transactions on Visualization and Computer Graphics | 2006

Graph Signatures for Visual Analytics

Pak Chung Wong; Harlan P. Foote; George Chin; Patrick S. Mackey; Kenneth A. Perrine

We present a visual analytics technique to explore graphs using the concept of a data signature. A data signature, in our context, is a multidimensional vector that captures the local topology information surrounding each graph node. Signature vectors extracted from a graph are projected onto a low-dimensional scatterplot through the use of scaling. The resultant scatterplot, which reflects the similarities of the vectors, allows analysts to examine the graph structures and their corresponding real-life interpretations through repeated use of brushing and linking between the two visualizations. The interpretation of the graph structures is based on the outcomes of multiple participatory analysis sessions with intelligence analysts conducted by the authors at the Pacific Northwest National Laboratory. The paper first uses three public domain data sets with either well-known or obvious features to explain the rationale of our design and illustrate its results. More advanced examples are then used in a customized usability study to evaluate the effectiveness and efficiency of our approach. The study results reveal not only the limitations and weaknesses of the traditional approach based solely on graph visualization, but also the advantages and strengths of our signature-guided approach presented in the paper


ieee symposium on information visualization | 2005

Dynamic visualization of graphs with extended labels

Pak Chung Wong; Patrick S. Mackey; Kenneth A. Perrine; James R. Eagan; Harlan P. Foote; James J. Thomas

The paper describes a novel technique to visualize graphs with extended node and link labels. The lengths of these labels range from a short phrase to a full sentence to an entire paragraph and beyond. Our solution is different from all the existing approaches that almost always rely on intensive computational effort to optimize the label placement problem. Instead, we share the visualization resources with the graph and present the label information in static, interactive, and dynamic modes without the requirement for tackling the intractability issues. This allows us to reallocate the computational resources for dynamic presentation of real time information. The paper includes a user study to evaluate the effectiveness and efficiency of the visualization technique.


IEEE Transactions on Visualization and Computer Graphics | 2006

Generating Graphs for Visual Analytics through Interactive Sketching

Pak Chung Wong; Harlan P. Foote; Patrick S. Mackey; Kenneth A. Perrine; George Chin

We introduce an interactive graph generator, GreenSketch, designed to facilitate the creation of descriptive graphs required for different visual analytics tasks. The human-centric design approach of GreenSketch enables users to master the creation process without specific training or prior knowledge of graph model theory. The customized user interface encourages users to gain insight into the connection between the compact matrix representation and the topology of a graph layout when they sketch their graphs. Both the human-enforced and machine-generated randomnesses supported by GreenSketch provide the flexibility needed to address the uncertainty factor in many analytical tasks. This paper describes more than two dozen examples that cover a wide variety of graph creations from a single line of nodes to a real-life small-world network that describes a snapshot of telephone connections. While the discussion focuses mainly on the design of GreenSketch, we include a case study that applies the technology in a visual analytics environment and a usability study that evaluates the strengths and weaknesses of our design approach


Information Visualization | 2008

A dynamic multiscale magnifying tool for exploring large sparse graphs

Pak Chung Wong; Harlan P. Foote; Patrick S. Mackey; George Chin; Heidi J. Sofia; James J. Thomas

We present an information visualization tool, known as GreenMax, to visually explore large small-world graphs with up to a million graph nodes on a desktop computer. A major motivation for scanning a small-world graph in such a dynamic fashion is the demanding goal of identifying not just the well-known features but also the unknown-known and unknown-unknown features of the graph. GreenMax uses a highly effective multilevel graph drawing approach to pre-process a large graph by generating a hierarchy of increasingly coarse layouts that later support the dynamic zooming of the graph. This paper describes the graph visualization challenges, elaborates our solution, and evaluates the contributions of GreenMax in the larger context of visual analytics on large small-world graphs. We report the results of two case studies using GreenMax and the results support our claim that we can use GreenMax to locate unexpected features or structures behind a graph.


Cytometry Part A | 2006

Multispectral/hyperspectral image enhancement for biological cell analysis

Lisa L. Nuffer; Patricia A. Medvick; Harlan P. Foote; James C. Solinsky

Microscopes form projected images from illuminated objects, such as cellular tissue, which are recorded at a distance through the optical systems field of view. A telescope on a satellite or airplane also forms images with a similar optical projection of objects on the ground. Typical visible illuminations form a displayed set of three‐color channels (Red Green Blue [RGB]) that are combined from three image sensor arrays (e.g., focal plane arrays) into a single pixel coding for each color present in the image. Analysis of these RGB color images develops a qualitative image representation of the objects.

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Pak Chung Wong

Pacific Northwest National Laboratory

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James J. Thomas

Pacific Northwest National Laboratory

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Patrick S. Mackey

Pacific Northwest National Laboratory

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Kenneth A. Perrine

Pacific Northwest National Laboratory

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George Chin

Pacific Northwest National Laboratory

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Wendy E. Cowley

Battelle Memorial Institute

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Dan Adams

Pacific Northwest National Laboratory

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L. Ruby Leung

Pacific Northwest National Laboratory

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Douglas L. McMakin

Battelle Memorial Institute

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Elizabeth Jurrus

Pacific Northwest National Laboratory

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