Visualization of High-dimensional Scalar Functions Using Principal Parameterizations

Insightful visualization of multidimensional scalar fields, in particular parameter spaces, is key to many fields in computational science and engineering. We propose a principal component-based approach to visualize such fields that accurately reflects their sensitivity to input parameters... (read more)

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