Growth Rate Analysis of Stem Cells, By Using Segmentation, Features Extraction and Pattern Recognition
نویسندگان
چکیده
Pattern recognition is a machine learning process that emphasizes on the various discontinuities in data. It can also be stated as how machines differentiate the region of interest from the background. This is initially done by the classification of patterns either into supervised or unsupervised class based on the similarity or system designer. A well defined recognition system will have less variations in intra class and high variations in inter class.
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