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Current Status of Education of Deseriptive Geometry in Europe
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作者 Gunter Weiss Institute for Geometry, Dresden University of Technology, Dresden D-01062, Japan 《Computer Aided Drafting,Design and Manufacturing》 2001年第1期62-68,共7页
In this paper the importance of eometry?and raphics?for the advancement of science and knowledge in 19th century is pointed out. Klein and Müller reform of geometry syllabus in 19th century and the education situ... In this paper the importance of eometry?and raphics?for the advancement of science and knowledge in 19th century is pointed out. Klein and Müller reform of geometry syllabus in 19th century and the education situation of Geometry and Graphics in Europe during the last third of 20th century are introduced. The problems of geometry and graphics education during the next decedes and six proposals are presented. 展开更多
关键词 education of descriptive geometry Klein and Müller reform of geometry syllabus Bourbaki reform of syllabus geometric visualization future geometry teacher.
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Mammogram Learning System for Breast Cancer Diagnosis Using Deep Learning SVM
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作者 G.Jayandhi J.S.Leena Jasmine S.Mary Joans 《Computer Systems Science & Engineering》 SCIE EI 2022年第2期491-503,共13页
The most common form of cancer for women is breast cancer.Recent advances in medical imaging technologies increase the use of digital mammograms to diagnose breast cancer.Thus,an automated computerized system with hig... The most common form of cancer for women is breast cancer.Recent advances in medical imaging technologies increase the use of digital mammograms to diagnose breast cancer.Thus,an automated computerized system with high accuracy is needed.In this study,an efficient Deep Learning Architecture(DLA)with a Support Vector Machine(SVM)is designed for breast cancer diagnosis.It combines the ideas from DLA with SVM.The state-of-the-art Visual Geometric Group(VGG)architecture with 16 layers is employed in this study as it uses the small size of 3×3 convolution filters that reduces system complexity.The softmax layer in VGG assumes that the training samples belong to exactly only one class,which is not valid in a real situation,such as in medical image diagnosis.To overcome this situation,SVM is employed instead of the softmax layer in VGG.Data augmentation is also employed as DLA usually requires a large number of samples.VGG model with different SVM kernels is built to classify the mammograms.Results show that the VGG-SVM model has good potential for the classification of Mammographic Image Analysis Society(MIAS)database images with an accuracy of 98.67%,sensitivity of 99.32%,and specificity of 98.34%. 展开更多
关键词 Deep learning architecture support vector machine breast cancer visual geometric group data augmentation
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