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Automatic target recognition application in mammography and synthetic aperture radar images.

机译:自动目标识别在乳腺摄影和合成孔径雷达图像中的应用。

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Automatic Target Recognition (ATR) is an important issue in many military and non-military applications. ATR generally refers to the use of computer processing to detect and recognize target signatures in sensor data. One of the applications of ATR that has drawn a lot of attention recently is the computer-aided diagnosis (CADx) system of breast cancer. This dissertation describes a new CADx system used to analyze regions of interest (ROIs), specifically masses, in digitized mammograms. The algorithm and architecture is based on a framework of dividing the ROI into different ellipsoidal regions after extracting the mass automatically. This approach has never been applied to breast cancer diagnosis. Ellipsoidal ring features and size, shape, contrast, and texture features were extracted. Statistical-based feature saliency techniques were used to determine the best features for discrimination. The regions were then classified using one of four methods. These classifiers are a multilayer perception neural network, a Mahalanobis distance classifier, a quadratic classifier, and a Fisher discriminant linear classifier. The mass detection system performed well in identifying spiculated masses in digitized mammograms. Using the resubstitution method, the CADx system correctly classified 98.28 percent of the spiculated masses with true negative (TN) accuracy of 97.67 percent with a quadratic classifier. On the other hand, using the leave-half-out (LHO) method, the best performance was a true positive (TP) accuracy of 83.79 percent and a TN accuracy of 80.62 percent with a Fisher linear classifier. However, since the LHO method is very pessimistic, the actual error rate is lower. The performance on classifying malignant tumors was also very good. The quadratic classifier reached 100 percent TP accuracy, and 98.52 percent TN accuracy using the resubstitution method. Using the LHO method, the TP accuracy was 93.41 percent and the TN accuracy was 59.82 percent. These results are from the several biopsy-proven database of 245 masses obtained from two hospitals (12 bit, 43.5 micron).; This dissertation also uses Gabor filters and the weighted Mahalanobis distance clustering technique for autonomous segmentation of (1 foot by 1 foot) high-resolution polarimetric synthetic aperture radar (SAR) images. Processing involved correlation between the SAR imagery and Gabor functions. This research used even-symmetric cosine Gabor functions and operated on single polarization horizontal-horizontal magnitude data. Provided are results demonstrating combination of Gabor processing and WMD clustering provide scene segmentation. The WMD algorithm achieved consistent improvements over the competing method in both the visual quality and the “misclassification” rate.
机译:在许多军事和非军事应用中,自动目标识别(ATR)是一个重要的问题。 ATR通常是指使用计算机处理来检测和识别传感器数据中的目标签名。最近引起人们广泛关注的ATR应用之一是乳腺癌的计算机辅助诊断(CADx)系统。本文介绍了一种新的CADx系统,用于分析数字化X线照片中的感兴趣区域(ROI),特别是质量。该算法和体系结构基于在自动提取质量后将ROI分为不同的椭圆形区域的框架。这种方法从未应用于乳腺癌的诊断。提取椭球环特征以及大小,形状,对比度和纹理特征。基于统计的特征显着性技术用于确定最佳的歧视特征。然后使用四种方法之一对区域进行分类。这些分类器是多层感知神经网络,马氏距离分类器,二次分类器和Fisher判别线性分类器。质量检测系统在识别数字化乳腺X线照片中的细小肿块方面表现良好。使用二次替换方法,CADx系统使用二次分类器正确分类了98.28%的针状质量,真负(TN)准确度为97.67%。另一方面,使用留半分法(LHO),使用Fisher线性分类器的最佳性能是真实正(TP)准确度为83.79%,TN准确度为80.62%。但是,由于LHO方法非常悲观,因此实际错误率较低。在分类恶性肿瘤方面的表现也非常好。使用二次替换方法,二次分类器达到了100%的TP精度和98.52%的TN精度。使用LHO方法,TP精度为93.41%,TN精度为59.82%。这些结果来自于两家医院(12位,43.5微米)的245个肿块经活检证明的数个数据库。本文还使用Gabor滤波器和加权Mahalanobis距离聚类技术对(1英尺x 1英尺)高分辨率偏振合成孔径雷达(SAR)图像进行自动分割。处理过程涉及SAR图像和Gabor函数之间的相关性。这项研究使用了偶数对称的余弦Gabor函数,并且对单极化水平-水平幅度数据进行了运算。提供的结果证明了Gabor处理和WMD聚类的结合提供了场景分割。 WMD算法在视觉质量和“误分类”率方面均比竞争方法获得了持续改进。

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