Lucent Technologies - Proprietary 1 Interactive Pattern Discovery with Mirage Mirage uses exploratory visualization, intuitive graphical operations to.

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Presentation transcript:

Lucent Technologies - Proprietary 1 Interactive Pattern Discovery with Mirage Mirage uses exploratory visualization, intuitive graphical operations to help Track horizontal correlations across different types of attributes for the same objects or events Track vertical correlations across layers of abstraction from signals to the results of analysis Integrate human and machine pattern recognition capabilities A fundamental concern in data analysis is to find correlations among different things.

Lucent Technologies - Proprietary 2 Processed Images Raw Images Vertical Correlations across Layers of Analysis Numerical Features Classes and Groups Relationship between Groups Interpretation in Context Validation in Input Domain

Lucent Technologies - Proprietary 3 Horizontal Correlations: Similarity of Objects from Different Perspectives Objects can be described by many types of attributes: position, morphology, color, spectra, temporal variability, motion parameters … Meaningful similarity metric exists only for attributes of the same type Similar groups found from one perspective need to be correlated to those from others e.g. Are the objects similar in color also similar in shape? Shape groups Color groups

Lucent Technologies - Proprietary 4 Human / Machine Interaction in Pattern Discovery Domain expertise Hypotheses from theory or intuition Decisions in algorithmic choices Interpretation in context Visualized data geometry Systematic exploration control Computed features & data structures Tentative classifications, indicators