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1.
IEEE Trans Vis Comput Graph ; 17(12): 2402-11, 2011 Dec.
Article in English | MEDLINE | ID: mdl-22034361

ABSTRACT

Image analysis algorithms are often highly parameterized and much human input is needed to optimize parameter settings. This incurs a time cost of up to several days. We analyze and characterize the conventional parameter optimization process for image analysis and formulate user requirements. With this as input, we propose a change in paradigm by optimizing parameters based on parameter sampling and interactive visual exploration. To save time and reduce memory load, users are only involved in the first step--initialization of sampling--and the last step--visual analysis of output. This helps users to more thoroughly explore the parameter space and produce higher quality results. We describe a custom sampling plug-in we developed for CellProfiler--a popular biomedical image analysis framework. Our main focus is the development of an interactive visualization technique that enables users to analyze the relationships between sampled input parameters and corresponding output. We implemented this in a prototype called Paramorama. It provides users with a visual overview of parameters and their sampled values. User-defined areas of interest are presented in a structured way that includes image-based output and a novel layout algorithm. To find optimal parameter settings, users can tag high- and low-quality results to refine their search. We include two case studies to illustrate the utility of this approach.


Subject(s)
Computer Graphics , Image Processing, Computer-Assisted/statistics & numerical data , User-Computer Interface , Algorithms , Androstadienes/pharmacology , Cell Line , Cell Nucleus/drug effects , Cell Nucleus/ultrastructure , Chromones/pharmacology , Computer Simulation , Humans , Morpholines/pharmacology , Software , Wortmannin
3.
IEEE Trans Vis Comput Graph ; 12(5): 685-92, 2006.
Article in English | MEDLINE | ID: mdl-17080788

ABSTRACT

We present a new approach for the visual analysis of state transition graphs. We deal with multivariate graphs where a number of attributes are associated with every node. Our method provides an interactive attribute-based clustering facility. Clustering results in metric, hierarchical and relational data, represented in a single visualization. To visualize hierarchically structured quantitative data, we introduce a novel technique: the bar tree. We combine this with a node-link diagram to visualize the hierarchy and an arc diagram to visualize relational data. Our method enables the user to gain significant insight into large state transition graphs containing tens of thousands of nodes. We illustrate the effectiveness of our approach by applying it to a real-world use case. The graph we consider models the behavior of an industrial wafer stepper and contains 55 043 nodes and 289 443 edges.

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