使用金字塔上下文特征的体积语义分割。

Jonathan T Barron, Pablo Arbeláez, Soile V E Keränen, Mark D Biggin, David W Knowles, Jitendra Malik
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引用次数: 15

摘要

提出了一种三维体的逐体素语义分割算法。我们算法的核心是一个新颖的“金字塔上下文”特征,这是一个描述性的表示,可以使精确的每体素线性分类非常有效。这个特性不仅允许有效的语义分割,而且支持我们算法的其他方面,例如新的学习特征和可以对自一致性进行推理的堆叠架构。我们在果蝇胚胎的3D荧光显微镜数据上展示了我们的技术,我们能够在几分钟内产生非常准确的语义分割,并且由于数据的大小和高维,或者由于任务的难度,其他算法失败。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Volumetric Semantic Segmentation using Pyramid Context Features.

We present an algorithm for the per-voxel semantic segmentation of a three-dimensional volume. At the core of our algorithm is a novel "pyramid context" feature, a descriptive representation designed such that exact per-voxel linear classification can be made extremely efficient. This feature not only allows for efficient semantic segmentation but enables other aspects of our algorithm, such as novel learned features and a stacked architecture that can reason about self-consistency. We demonstrate our technique on 3D fluorescence microscopy data of Drosophila embryos for which we are able to produce extremely accurate semantic segmentations in a matter of minutes, and for which other algorithms fail due to the size and high-dimensionality of the data, or due to the difficulty of the task.

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