posted on 2017-12-06, 00:00authored byBrijesh Verma, Rinku Panchal, K Kumar
The paper proposes a novel min-max feature value based neural architecture and learning algorithm for classification of microcalcification patterns in digital mammograms. The neural architecture has a single hidden layer and it has a fixed number of hidden units and outputs. One class is represented by three hidden units and an output. The suspicious areas represented by chain code, are extracted from digital mammograms. The feature values are extracted for benign and malignant microcalcifications. A set of min, average and max values for every input feature is defined and assigned to the weights between input and hidden layer. The weights of the output layer are calculated using least squares methods or assigned in such a way that it maximizes the output value for only one class. Many experiments were conducted on a benchmark database of digital mammograms and comparative results are included in this paper.
History
Start Page
2033
End Page
2038
Number of Pages
6
Start Date
2003-01-01
ISSN
1098-7576
ISBN-10
0780378989
Location
Portland, Oregon
Publisher
The Institute of Electrical and Electronics Engineers