Changes for page 4. Image segmentation with ilastik
Last modified by annedevismes on 2021/06/08 11:56
From version 11.1
edited by evanhancock
on 2020/07/21 09:34
on 2020/07/21 09:34
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... ... @@ -1,6 +1,6 @@ 1 1 == [[image:ilastik_logo.PNG||style="float:right"]] == 2 2 3 -== (% style="color:#c0392b" %)Analysis approach for series of rodent brain section image(%%) == 3 +== [[image:Pixel_classification workflow.png||style="float:left"]](% 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 ... ... @@ -11,7 +11,7 @@ 11 11 12 12 **Which approach is best for my dataset?** 13 13 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 s ize and shape. 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 shape and size. The best approach is determined by trial and error. 15 15 16 16 === (% style="color:#c0392b" %)Pixel classification workflow(%%) === 17 17 ... ... @@ -19,11 +19,29 @@ 19 19 20 20 **Basic steps:** 21 21 22 -* Train the classifier with two classes (labeling and background) 22 +* Train the classifier with two classes (labelling and background) 23 23 * Apply the classifier to the rest of the images (batch processing) 24 24 * Export the probability maps in HDF5 format, and simple_segmentation images in PNG format with the default settings. 25 25 * Review the results. 26 26 27 +=== === 28 + 29 +=== === 30 + 31 +=== === 32 + 33 +=== === 34 + 35 + 36 + 37 + 38 + 39 + 40 + 41 + 42 + 43 + 44 + 27 27 === (% style="color:#c0392b" %)Object classification workflow(%%) === 28 28 29 29 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//**.**
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