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HANDCRAFTED FEATURES WITH CONVOLUTIONAL NEURAL NETWORKS FOR DETECTION OF TUMOR CELLS IN HISTOLOGY IMAGES

机译:具有卷积神经网络的手工特征,用于检测组织学图像中的肿瘤细胞

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Detection of tumor nuclei in cancer histology images requires sophisticated techniques due to the irregular shape, size and chromatin texture of the tumor nuclei. Some very recently proposed methods employ deep convolutional neural networks (CNNs) to detect cells in H&E stained images. However, all such methods use some form of raw pixel intensities as input and rely on the CNN to learn the deep features. In this work, we extend a recently proposed spatially constrained CNN (SC-CNN) by proposing features that capture texture characteristics and show that although CNN produces good results on automatically learned features, it can perform better if the input consists of a combination of handcrafted features and the raw data. The handcrafted features are computed through the scattering transform which gives non-linear invariant texture features. The combination of handcrafted features with raw data produces sharp proximity maps and better detection results than the results of raw intensities with a similar kind of CNN architecture.
机译:由于肿瘤核的不规则形状,大小和染色质纹理,检测癌症组织学图像中的肿瘤细胞核需要复杂的技术。一些非常最近的方法采用深度卷积神经网络(CNNS)来检测H&E染色图像中的细胞。但是,所有此类方法都使用某种形式的原始像素强度作为输入,并依赖于CNN来学习深度特征。在这项工作中,我们通过提出捕获纹理特征的特征来扩展最近提出的空间约束的CNN(SC-CNN),并表明虽然CNN在自动学习的功能上产生良好的结果,但如果输入包括手工制作的组合,则可以更好地执行更好功能和原始数据。通过散射变换计算手工制作功能,可提供非线性不变纹理功能。使用原始数据的手工特征的组合产生尖锐的接近地图和更好的检测结果,而不是具有类似类型的CNN架构的原始强度的结果。

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