I'm trying to regrid a numpy array onto a new grid. In this specific case, I'm trying to regrid a power spectrum onto a logarithmic grid so that the data are evenly spaced logarithmically for plotting purposes.
Doing this with straight interpolation using
np.interp results in some of the original data being ignored entirely. Using
digitize gets the result I want, but I have to use some ugly loops to get it to work:
xfreq = np.fft.fftfreq(100)[1:50] # only positive, nonzero freqs psw = np.arange(xfreq.size) # dummy array for MWE # new logarithmic grid logfreq = np.logspace(np.log10(np.min(xfreq)), np.log10(np.max(xfreq)), 100) inds = np.digitize(xfreq,logfreq) # interpolation: ignores data *but* populates all points logpsw = np.interp(logfreq, xfreq, psw) # so average down where available... logpsw[np.unique(inds)] = [psw[inds==i].mean() for i in np.unique(inds)] # the new plot loglog(logfreq, logpsw, linewidth=0.5, color='k')
Is there a nicer way to accomplish this in numpy? I'd be satisfied with just a replacement of the inline loop step.