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Forming Local Intersections of Projections for Classifying and Searching Histopathology Images

机译:形成分类和搜索组织病理学图像的局部投影的局部交叉点

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In this paper, we propose a novel image descriptor called "Forming Local Intersections of Projections" (FLIP) and its multi-resolutional version (mFLIP) for representing histopathology images. The descriptor is based on the Radon transform wherein we apply parallel projections in small local neighborhoods of gray-level images. Using equidistant projection directions in each window, we extract unique and invariant characteristics of the neighborhood by taking the intersection of adjacent projections. Thereafter, we construct a histogram for each image, which we call the FLIP histogram. Various resolutions provide different FLIP histograms which are then concatenated to form the mFLIP descriptor. Our experiments included training common networks from scratch and fine-tuning pre-trained networks to benchmark our proposed descriptor. Experiments are conducted on the publicly available dataset KIMIA Path24 and KIMIA Path960. For both of these datasets, FLIP and mFLIP descriptors show promising results in all experiments. Using KIMIA Path24 data, FLIP outperformed non-fine-tuned Inception-v3 and fine-tuned VGG16 and mFLIP outperformed fine-tuned Inception-v3 in feature extracting.
机译:在本文中,我们提出了一种名为“形成局部交叉点的新型图像描述符”(翻转)及其多解析(MFLIP),用于表示组织病理学图像。描述符基于氡变换,其中我们在灰度级图像的小本地邻域中应用并行投影。在每个窗口中使用等距投影方向,我们通过参加相邻投影的交叉来提取邻域的独特和不变特征。此后,我们为每个图像构造一个直方图,我们调用折扣直方图。各种分辨率提供不同的翻转直方图,然后连接到形成MFLIP描述符。我们的实验包括从划痕和微调预先训练的网络中培训公共网络,以基准我们所提出的描述符。实验是在公开的数据集Kimia Path24和Kimia Path960上进行的。对于这两个数据集,翻转和MFLIP描述符显示所有实验中的有希望的结果。使用KIMIA PATH24数据,翻转优势表现出的非微调Incepion-V3和微调VGG16和MFLIP优于特征提取中的精细调谐Incepion-V3。

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