Detection of breast abnormalities of thermograms based on a new segmentation method

2015 Federated Conference on Computer Science and Information Systems (FedCSIS)(2015)

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摘要
Breast cancer is one from various diseases that has got great attention in the last decades. This due to the number of women who died because of this disease. Segmentation is always an important step in developing a CAD system. This paper proposed an automatic segmentation method for the Region of Interest (ROI) from breast thermograms. This method is based on the data acquisition protocol parameter (the distance from the patient to the camera) and the image statistics of DMR-IR database. To evaluated the results of this method, an approach for the detection of breast abnormalities of thermograms was also proposed. Statistical and texture features from the segmented ROI were extracted and the SVM with its kernel function was used to detect the normal and abnormal breasts based on these features. The experimental results, using the benchmark database, DMR-IR, shown that the classification accuracy reached (100%). Also, using the measurements of the recall and the precision, the classification results reached 100%. This means that the proposed segmentation method is a promising technique for extracting the ROI of breast thermograms.
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关键词
breast abnormality detection,breast cancer,CAD system,automatic segmentation method,region-of-interest,ROI,breast thermograms,data acquisition protocol parameter,image statistics,DMR-IR database,statistical feature extraction,texture feature extraction,SVM,kernel function,normal breast detection,abnormal breast detection,classification accuracy,recall value,precision value
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