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Compresso: Efficient Compression of Segmentation Data for Connectomics

机译:compresso:有效压缩Connectomics的分段数据

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Recent advances in segmentation methods for connectomics and biomedical imaging produce very large datasets with labels that assign object classes to image pixels. The resulting label volumes are bigger than the raw image data and need compression for efficient storage and transfer. General-purpose compression methods are less effective because the label data consists of large low-frequency regions with structured boundaries unlike natural image data. We present Compresso, a new compression scheme for label data that outperforms existing approaches by using a sliding window to exploit redundancy across border regions in 2D and 3D. We compare our method to existing compression schemes and provide a detailed evaluation on eleven biomedical and image segmentation datasets. Our method provides a factor of 600-2200x compression for label volumes, with running times suitable for practice.
机译:Connectomics和BioMeDical成像的分段方法的最新进展产生了具有标签将对象类分配给图像像素的标签的非常大的数据集。 生成的标签卷大于原始图像数据,需要压缩以便有效存储和传输。 通用压缩方法效果较低,因为标签数据由具有结构界限的大型低频区域,而不同于自然图像数据。 我们呈现Compresso,一种新的压缩方案,用于标签数据,通过使用滑动窗口越优于现有方法,以利用2D和3D的边界区域横跨边界区域冗余。 我们将我们的方法与现有的压缩方案进行比较,并在十一生物医学和图像分割数据集上提供详细的评估。 我们的方法为标签卷提供了600-2200倍的压缩,适合实践的运行时间。

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