首页> 外文会议>Advanced Computing, 2009. ICAC 2009 >A three-dimensional self-organizing neural network architecture for three-dimensional object extraction from a noisy perspective
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A three-dimensional self-organizing neural network architecture for three-dimensional object extraction from a noisy perspective

机译:从嘈杂的角度出发的用于三维对象提取的三维自组织神经网络架构

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Processing of three-dimensional image data for quality enhancement, segmentation and analysis is a challenging proposition due to the enormity of the underlying data content as well due to the inadequacy of data description standards. Extraction of objects from 3-dimensional image information is no exception. In this article, a novel three-dimensional neural network architecture is presented for faithful extraction of 3-dimensional objects from a noisy perspective. The proposed network architecture operates in a self-supervised mode assisted by fuzzy measures. Results of application of the proposed architecture are demonstrated on several synthetic and real life three-dimensional binary voxelized images. The efficacy of the architecture in different types of noises indicates encouraging avenues.
机译:由于底层数据内容的庞大性以及数据描述标准的不足,处理用于质量增强,分割和分析的三维图像数据是一项具有挑战性的提议。从3维图像信息中提取对象也不例外。在本文中,提出了一种新颖的三维神经网络体系结构,可从嘈杂的角度忠实地提取3维对象。所提出的网络体系结构以模糊度量为辅助的自监督模式运行。在几种合成的和现实的三维二进制体素化图像上展示了所提出的体系结构的应用结果。该架构在不同类型的噪声中的功效表明了令人鼓舞的途径。

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