# title: demo of spline using apache math library. # label: spline demo # Note this appears to yield a result different than IDL's result. from org.apache.commons.math.analysis.interpolation import SplineInterpolator setLayoutOverplot(2) x= dataset( [ 2., 3., 4., 5., 6., 7. ] ) y= dataset( [ 1, 3, 4, 3, 5, 3, ] ) #y= (x-3)**2 plot( 0, x, y, title='Original Data' ) si= SplineInterpolator() psf= si.interpolate( x, y ) xx= findgen(100)/20 + 2. yy= fltarr(100) for i in range(100): yy[i]= psf.value(xx[i].value()) plot( 1, xx, yy, title='Spline Interpolation' ) bind( dom.plots[0].xaxis, 'range', dom.plots[1].xaxis, 'range' ) bind( dom.plots[0].yaxis, 'range', dom.plots[1].yaxis, 'range' )