Automated

Description

This workflow classifies, or segments, the pixels of an image given user annotations. It is especially suited if the objects of interests are visually (brightness, color, texture) distinct from their surrounding. Users can iteratively select pixel features and provide pixel annotations through a live visualization of selected feature values and current prediction responses. Upon users' satisfaction, the workflow then predicts the remaining unprocessed image(s) regions or new images (as batch processing). Users can export (as images of various formats): selected features, annotations, predicted classification probability, simple segmentation, etc. This workflow is often served as one of the first step options for other workflows offered by ilastik, such as object classification, automatic tracking.

Description
An estimate of the shortest distance of vesicles to synaptic cleft is computed in 3D for serial section TEM. Unfortunately the the authors do not provide an implementation. Method: 1. Bias correction for inhomogene lighting 2. Image registration of TEM sections / stacks 3. Detection of vesicles & synaptic cleft (semi-automatic) 4. Compute distances in 3D
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Description
Well maintained and documented project that includes a core tracking incl. GUI as well as Matlab toolboxes to (1) correct tracking results and (2) analyze fly behavior. >Ctrax is an open-source, freely available, machine vision program for estimating the positions and orientations of many walking flies, maintaining their individual identities over long periods of time. It was designed to allow high-throughput, quantitative analysis of behavior in freely moving flies. Our primary goal in this project is to provide quantitative behavior analysis tools to the neuroethology community, thus we've endeavored to make the system adaptable to other labs' setups. We have assessed the quality of the tracking results for our setup, and found that it can maintain fly identities indefinitely with minimal supervision, and on average for 1.5 fly-hours automatically.
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Description

Illumination correction is often important for both accurate segmentation and for intensity measurements. This example shows how the CorrectIlluminationCalculate and CorrectIlluminationApply modules are used to compensate for the non-uniformities in illumination often present in microscopy images.

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Description

In this example, cells are grown as a tissue monolayer. Rather than identifying individual cells, this pipeline quantifies the area occupied by the tissue sample.

 

Download package also contains example images.