Automated Segmentation and Morphometry of Cell and Tissue Structures. Selected Algorithms in ImageJ
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چکیده
This chapter covers selected aspects of the segmentation and measurements of spatial or temporal features (i.e. morphometry) of biological objects in biomedical (non-optical)1 and microscopic images. The term measurement refers to a succinct quantitative representation of image features over space and time. This implies the application of the act of geometric measurement to the raw imaging data, i.e. "morphometry". Measurements arise in a defined experimental context.
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تاریخ انتشار 2012