Hist#
- class radionets.plotting.hist.Hist(outpath, plot_format: str = 'png', hist_kwargs: dict | None = None, save_kwargs: dict | None = None)[source]#
Bases:
objectMethods Summary
area(vals[, bins, return_fig])dynamic_ranges(dr_truth, dr_pred[, return_fig])gan_sources(ratio, num_zero, above_zero, ...)jet_angles(vals[, return_fig])jet_gaussian_distance(dist[, return_fig])Plotting the distances between predicted and true component of several images. Parameters ---------- dist: 2d array array of shape (n, 2), where n is the number of distances.
mean_diff(vals[, return_fig])ms_ssim(vals[, bins, return_fig])peak_intensity(vals[, bins, return_fig])point(vals, mask[, return_fig])sum_intensity(vals[, bins, return_fig])unc(vals[, return_fig])Methods Documentation