wi11dey / PyCalipers

Automatically detect layer orientation and thicknesses with accurate standard deviations in images

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

PyCalipers

Automatically detect layer orientation and thicknesses with accurate standard deviations in images. Originally used to process Scanning Electron Microscope images, but general enough to process arbitrary layers, even geological sediment, for example. Can also be imported as a calipers library.

Gaussian fit and standard deviations

CS_normalView_03.tif

Orientation detection

Usage

$ calipers.py CS_normalView_03.tif -o CS_normalView_03.csv
Reading...
Cropping...
Detecting orientation...
Rotating by 1.16407872°...
Differentiating...
Fitting Gaussian distributions...
Scaling...

$ cat CS_normalView_03.csv
Layer #,Thickness,Standard deviation,Units
1,106.890093,42.681708, nm
2,174.410448,42.713747, nm
3,107.248487,31.913159, nm
4,37.172840,46.892665, nm
5,62.560009,49.661766, nm
6,105.235871,36.444696, nm
7,159.979666,44.454964, nm
8,116.023772,43.562002, nm
9,369.716397,46.699883, nm
10,116.645687,43.981174, nm
11,155.810149,41.191307, nm
12,110.719272,40.908501, nm
13,80.611800,27.554137, nm
14,52.306222,14.994458, nm
15,84.130643,30.202688, nm
16,171.701936,44.438595, nm
17,111.500654,41.684820, nm
18,178.402873,40.577570, nm
19,144.529521,33.747483, nm
20,28.615011,10.351548, nm
21,112.093959,32.713880, nm
22,184.488292,46.618902, nm
23,113.293174,40.413320, nm
24,71.385392,25.874862, nm
25,255.580606,20.016292, nm
26,91.743626,24.327549, nm
27,129.679163,29.091099, nm
28,218.338424,29.518431, nm
29,130.067721,28.666897, nm
30,217.953899,27.983413, nm
31,131.219414,27.302246, nm
32,205.978617,25.977732, nm
33,125.231194,20.332181, nm
34,35.635510,13.453500, nm
35,122.200944,19.432452, nm
36,204.321501,24.097702, nm
37,130.492771,23.434461, nm
38,213.594431,22.834548, nm
39,114.034742,22.350233, nm
40,166.448330,21.778308, nm
41,102.911302,21.203220, nm
42,170.224846,20.902043, nm
...

About

Automatically detect layer orientation and thicknesses with accurate standard deviations in images


Languages

Language:Python 100.0%