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An ImageJ macro to measure distance between two lines
InteredgeDistance is a macro for ImageJ/Fiji image analysis software. This tool measures the distance between two user-drawn lines on an image. For community help/support, please use https://forum.image.sc/.
Overview: Here we present FijiWings for Mac and Windows, a set of macros designed to perform semi-automated morphophometric analysis of a wing photomicrograph. FijiWings uses plug-ins installed in the Fiji version of ImageJ to rapidly and accurately measure wing area, reliably detect trichome positions and calculate trichome density of a wing region selected by the user.
UPDATES:
12-6-20 Fijiwings 2.4 for Mac is uploaded. Bundles JAVA and ImageJ update to the current day. Following download, runs on a Imac and a MacBook running Mojave and Catalina. ...
A tool for unbiased and reproducible cell morphometry in Fiji/ImageJ2
MORPHEUS is a Fiji/ImageJ2 plugin for the automated evaluation of cell morphometry from cell cultures images acquired by fluorescence microscopy. Specifically, MORPHEUS works with sampling distributions to learn—in an unsupervised manner and by a non-parametric approach—how to recognize the cells suitable for subsequent analysis. Afterwards, the algorithm performs the evaluation of the most relevant cell-shape descriptors over the full set of detected cells.