Automatic Membrane Segmentation of Ihc Images Enables the Analysis of Cancer Breast Tissues
نویسندگان
چکیده
The basis for a robust and accurate quantification is the segmentation of regions of interest (ROIs) defined by different histopathologic features. Several kinds of problems arise in ROIs segmentation of histopathologic images due to diverse factors such as: nonstationary and correlated noise, illumination, busyness of gray levels within the object and its background, inadequate contrast, among others [7].
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