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Trainable Weka Segmentation: a machine learning tool for microscopy pixel classification.

Bioinformatics 2017 August 2
Summary: State-of-the-art light and electron microscopes are capable of acquiring large image datasets, but quantitatively evaluating the data often involves manually annotating structures of interest. This process is time-consuming and often a major bottleneck in the evaluation pipeline. To overcome this problem, we have introduced the Trainable Weka Segmentation (TWS), a machine learning tool that leverages a limited number of manual annotations in order to train a classifier and segment the remaining data automatically. In addition, TWS can provide unsupervised segmentation learning schemes (clustering) and can be customized to employ user-designed image features or classifiers.

Availability and Implementation: TWS is distributed as open-source software as part of the Fiji image processing distribution of ImageJ at https://imagej.net/Trainable_Weka_Segmentation .

Contact: [email protected].

Supplementary information: Supplementary data are available at Bioinformatics online.

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