Segmentation of coring images using fully convolutional neural networks

S. Fazekas, S. Obrochta, Tatsuhiko Sato, A. Yamamura
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引用次数: 2

Abstract

As a first step in building a toolkit for the computer analysis of images of sea floor sediment cores, we introduce a technique to automate a time consuming manual phase of said analysis. The retrieved cores contain artifacts, e.g., induced by the extraction itself, the removal of which improves the efficiency of environmental reconstruction. From a computer vision perspective, the task of identifying those artifacts is an image segmentation problem. The method we describe as a solution uses the recently introduced fully convolutional neural networks (FCN), which have been shown to be very efficient in segmenting images.
使用全卷积神经网络分割核心图像
作为构建海底沉积物岩心图像计算机分析工具包的第一步,我们介绍了一种技术来自动化耗时的人工分析阶段。提取的岩心包含伪影,例如由提取本身引起的伪影,去除这些伪影可提高环境重建的效率。从计算机视觉的角度来看,识别这些伪影的任务是一个图像分割问题。我们描述的解决方案使用了最近引入的全卷积神经网络(FCN),它在分割图像方面非常有效。
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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