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Multi-Class Micro-CT Image Segmentation Using Sparse Regularized Deep Networks

机译:使用稀疏正则化深网络的多级微CT图像分割

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摘要

It is common in anthropology and paleontology to address questions about extant and extinct species through the quantification of osteological features observable in micro-computed tomographic (mCT) scans. In cases where remains were buried, the grey values present in these scans may be classified as belonging to air, dirt, or bone. While various intensity-based methods have been proposed to segment scans into these classes, it is often the case that intensity values for dirt and bone are nearly indistinguishable. In these instances, scientists resort to laborious manual segmentation, which does not scale well in practice when a large number of scans are to be analyzed. Here we present a new domain-enriched network for three-class image segmentation, which utilizes the domain knowledge of experts familiar with manually segmenting bone and dirt structures. More precisely, our novel structure consists of two components: 1) a representation network trained on special samples based on newly designed custom loss terms, which extracts discriminative bone and dirt features, 2) and a segmentation network that leverages these extracted discriminative features. These two parts are jointly trained in order to optimize the segmentation performance. A comparison of our network to that of the current state-of-the-art U-NETs demonstrates the benefits of our proposal, particularly when the number of labeled training images are limited, which is invariably the case for mCT segmentation.
机译:在人类学和古生物学中,通过定量在微计算断层扫描(MCT)扫描中可观察到的骨论学特征来解决关于现存和灭绝物种的问题。在掩埋的情况下,这些扫描中存在的灰度值可以被归类为属于空气,污垢或骨骼。虽然已经提出了各种强度的方法将扫描分段扫描到这些类中,但通常情况是污垢和骨骼的强度值几乎无法区分。在这些实例中,科学家们求助于费力的手动分割,当要分析大量扫描时,在实践中没有很好地扩展。在这里,我们为三类图像分割提供了一个新的域丰富的网络,它利用熟悉手动分割骨骼和污垢结构的专家域知识。更精确地,我们的新颖结构由两个组成部分组成:1)基于新设计的自定义损失术语在特殊样本上培训的表示网络,其提取判别骨骼和污垢功能,2)和利用这些提取的鉴别特征的分割网络。这两部分是联合训练的,以优化分割性能。我们的网络与当前最先进的U-Net的网络的比较展示了我们提案的好处,特别是当标记训练图像的数量有限时,这是MCT分段的情况总是如此。

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