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A Color-Based High Temperature Extraction Method in Breast Thermogram to Classify Cancerous and Healthy Cases using SVM

机译:基于SVM的乳房热像图中基于颜色的高温提取方法对癌和健康病例进行分类

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Breast cancer claims thousands of lives every year. Detecting the disease early can save lives. There is a quite growing research towards detecting cancer from breast thermograms; nevertheless few have investigated role of the color channels on segmentation and feature extraction using different measurements which include sensitivity, accuracy, and specificity. The objective of this research is three fold. Firstly, to investigate the impact of using the green and blue channels on segmenting both the left and right breasts toward improving cancer detection. Secondly, the impact of using features based on three channels: Red and Green and Blue. Thirdly, we compare between the impacts on classification performance when using mean based on a grayscale version of the color image and when using the mean based on three color channels. In this research, we use thermogram images from Brazil. Each patient in the images dataset has undergone a mammogram and based on the mammogram the patient is labeled as being sick or not sick. To classify an image as being normal or not, a histograms-based method is developed first. Extracting the high heat which represents the body temperature that exists in the breast area of the image can give a strong indication of some kind of abnormality present in a breast. Here, we used the histogram based technique to process an image to produce either one that represents the high heat, some high heat or none in the breast and then we correlate some features from the extracted image related to three color channels to support the abnormality indication. Using extracted features and SVM, we achieved high measurements in differentiating between cancerous and healthy images and also noticeable improvement over the original cropped images using the same features.
机译:乳腺癌每年夺去数千条生命。尽早发现疾病可以挽救生命。从乳房热像图检测癌症的研究越来越多。但是,很少有人使用不同的测量方法(包括敏感性,准确性和特异性)来研究颜色通道在分割和特征提取中的作用。这项研究的目标是三个方面。首先,研究使用绿色和蓝色通道对分割左右乳房对改善癌症检测的影响。其次,使用基于三个渠道的功能的影响:红色,绿色和蓝色。第三,我们比较了使用基于彩色图像灰度版本的均值和使用基于三个颜色通道的均值时对分类性能的影响。在这项研究中,我们使用来自巴西的温度记录图图像。图像数据集中的每个患者都接受了乳房X光检查,并根据乳房X光检查将患者标记为生病或未生病。为了将图像分类为正常图像还是不正常图像,首先开发了基于直方图的方法。提取代表图像的乳房区域中存在的体温的高热量可以强烈指示乳房中存在某种异常。在这里,我们使用了基于直方图的技术来处理图像,以产生一个代表高热量的图像,或者代表乳房中较高的热量,或者在乳房中不显示任何图像,然后我们将与三个颜色通道相关的提取图像的某些特征关联起来,以支持异常指示。使用提取的特征和SVM,我们在区分癌变图像和健康图像方面获得了很高的测量结果,并且在使用相同特征的原始裁剪图像上也有了明显的改进。

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