Abstract:
This thesis deals with the visualization of regular and irregular (scattered) data using spline
curves and surfaces. For the spline curves, a 1 C rational cubic spline is proposed and
developed with two free parameters together the error analysis discussed. The proposed
rational spline is used to develop three new curve schemes to visualize the shaped data of the
positive, monotone and convex data. Algorithms have been developed for the three shape
preserving curves schemes. These curve schemes are practically demonstrated for various data
in literature.
For the visualization of regular grid data, the proposed curve interpolants are extended
to their surface counter parts (rational bi-cubic functions) over the rectangular grid. Each
boundary curve of the rectangular grid is constructed by the rational cubic functions having
two free parameters in its description. This work has been further extended to device three
new surface schemes for the visualization of shaped data by imposing data dependent
constraints on free parameters; first scheme for the visualization of positive data, second for
the visualization of monotone data and third for the visualization of convex data. The
algorithms have been designed, for each of surface schemes, to efficiently compute the
proposed shape preserving surfaces. The proposed surface schemes are practically
demonstrated to shape preserving data. The degree of smoothness attained is 1,1 C .
Lastly three schemes are introduced for the visualization of scattered data in the view
of positive, monotone and convex surfaces. The given scattered data is triangulated over the
domain and piecewise rational cubic function is used for the interpolation of boundary and the
radial curves. The final visualized surface is the convex combination of boundary and the
radial curves facilitating twelve parameters in each triangular patch. The data dependent
constraints are derived on six of the free parameters for visualization of positive, monotone
and convex shape of scattered data, while remaining six parameters are free for shape
modification.
These proposed schemes are local, computationally economical, do not constrain step
length, and are equally applicable to data with derivatives and without derivatives.