Files
tono/backend/nodes/tip_deconvolution.py

46 lines
1.5 KiB
Python

from __future__ import annotations
import numpy as np
from scipy.ndimage import grey_erosion
from backend.node_registry import register_node
from backend.data_types import DataField
@register_node(display_name="Tip Deconvolution")
class TipDeconvolution:
@classmethod
def INPUT_TYPES(cls):
return {
"required": {
"field": ("DATA_FIELD",),
"tip": ("DATA_FIELD",),
}
}
OUTPUTS = (
('DATA_FIELD', 'surface'),
)
FUNCTION = "process"
DESCRIPTION = (
"Reconstruct the true surface from a tip-broadened measured image. "
"Uses morphological grey erosion (Villarrubia algorithm): "
" mytip = flip(tip) - max(flip(tip)) [max shifted to 0] "
" surface[y,x] = min_{dy,dx}[image[y+dy, x+dx] - mytip[dy,dx]] "
"Connect the tip output from a TipModel node. "
"The tip pixel size must match the image pixel size. "
)
KEYWORDS = ("erosion", "morphology", "villarrubia", "surface reconstruction", "apex", "deblur")
def process(self, field: DataField, tip: DataField) -> tuple:
# Gwyddion gwy_tip_erosion:
# mytip = flip(tip) - max(flip(tip)) (values ≤ 0, apex = 0)
# result[y,x] = min_{ty,tx}[surface[y+ty, x+tx] - mytip[ty,tx]]
tip_flipped = np.flipud(np.fliplr(tip.data))
mytip = tip_flipped - tip_flipped.max() # shift so max = 0
result = grey_erosion(field.data, structure=mytip)
return (field.replace(data=result),)