Attention: The Collaboratory IAM will down for up to 1 hour on Monday, the 7th of July 2025 starting from 5pm CEST (my timezone) for up to 1 hour. Any and all services, which require a user login with an EBRAINS account, will be un-available during that time


Last modified by annedevismes on 2021/06/08 11:56

From version 16.1
edited by puchades
on 2020/09/24 12:16
Change comment: There is no comment for this version
To version 11.1
edited by evanhancock
on 2020/07/21 09:34
Change comment: There is no comment for this version

Summary

Details

Page properties
Author
... ... @@ -1,1 +1,1 @@
1 -XWiki.puchades
1 +XWiki.evanhancock
Content
... ... @@ -1,28 +1,17 @@
1 1  == [[image:ilastik_logo.PNG||style="float:right"]] ==
2 2  
3 -== [[image:Pixel_classification workflow.png||style="float:left"]](% style="color:#c0392b" %)Analysis approach for series of rodent brain section image(%%) ==
3 +== (% style="color:#c0392b" %)Analysis approach for series of rodent brain section image(%%) ==
4 4  
5 5  Ilastik is a versatile image analysis tool specifically designed for the classification, segmentation and analysis of biological images based on supervised machine learning algorithms.
6 6  
7 +There are two main approaches for the analysis of rodent brain section images.
7 7  
8 -
9 -
10 -
11 -
12 -
13 -
14 -
15 -
16 -
17 -
18 -There are two main approaches for the analysis of rodent brain section image
19 -
20 20  1. Pixel classification only (with two or more classes)
21 21  1. Pixel classification with two classes (//immunoreactivity// and //background//), followed by object classification with two classes (//objects of interest// and //artefact//).
22 22  
23 23  **Which approach is best for my dataset?**
24 24  
25 -As a general rule, pixel classification is suitable for images in which there are clear differences in the colour, intensity and / or texture of the feature of interest (labelling) versus the background and other structures.  If there is non-specific labelling in the image that is very similar in appearance to the labelling of interest, object classification may allow the non-specific labelling to be filtered out based on object level features such as shape and size. The best approach is determined by trial and error.
14 +As a general rule, pixel classification is suitable for images in which there are clear differences in the colour, intensity and/ or texture of the feature of interest (labelling) versus the background and other structures.  If there is non-specific labelling in the image that is very similar in appearance to the labelling of interest, object classification may allow the non-specific labelling to be filtered out based on object level features such as size and shape. The best approach is determined by trial and error.
26 26  
27 27  === (% style="color:#c0392b" %)Pixel classification workflow(%%) ===
28 28  
... ... @@ -30,29 +30,11 @@
30 30  
31 31  **Basic steps:**
32 32  
33 -* Train the classifier with two classes (labelling and background)
22 +* Train the classifier with two classes (labeling and background)
34 34  * Apply the classifier to the rest of the images (batch processing)
35 35  * Export the probability maps in HDF5 format, and simple_segmentation images in PNG format with the default settings.
36 36  * Review the results.
37 37  
38 -=== ===
39 -
40 -=== ===
41 -
42 -=== ===
43 -
44 -=== ===
45 -
46 -
47 -
48 -
49 -
50 -
51 -
52 -
53 -
54 -
55 -
56 56  === (% style="color:#c0392b" %)Object classification workflow(%%) ===
57 57  
58 58  There are three options on the ilastik start up page for running Object Classification.  Choose the //Object Classification with Raw Data and Pixel Prediction Maps as input//**.**
Pixel_classification workflow.png
Author
... ... @@ -1,1 +1,0 @@
1 -XWiki.puchades
Size
... ... @@ -1,1 +1,0 @@
1 -1.0 MB
Content