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On-line Spectral Learning in Exploring 3D Large Scale Geo-Referred Scenes

机译:在线光谱学习在探索3D大规模地理参考场景中的应用

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Personalized navigation of 3D large scale geo-referred scenes has a tremendous impact in digital cultural heritage. This is a result of the recent progress in digitization technology which leads to the creation of massive digital geographic libraries. However, an efficient personalized 3D geo-referred architecture requires intelligent and on-line learning strategies able to dynamically capture user's preferences dynamics. In this paper, we propose an adaptive spectral learning framework towards 3D navigation of geo-referred scenes. Spectral clustering presents advantages compared to traditional center-based partitioning methods, such as the k-means; it effectively categorize non-Gaussian, complex distributions, present invariability to shapes and densities and it does not depend on the similarity metric used since learning is performed through similarity matrices by exploiting pair-wise comparisons. The main difficulty, however, in incorporating spectral learning in a 3D navigation architecture is its static implementation. To handle this difficulty, we propose in this paper an adaptive framework through the use of adaptive spectral learning which tailors 3D navigation to user's current needs.
机译:3D大规模地理参考场景的个性化导航对数字文化遗产产生了巨大影响。这是数字化技术的最新进展的结果,该技术导致创建了庞大的数字地理图书馆。但是,高效的个性化3D地理参考架构需要能够动态捕获用户偏好动态的智能在线学习策略。在本文中,我们提出了针对地理参考场景的3D导航的自适应频谱学习框架。与传统的基于中心的划分方法(例如k均值)相比,谱聚类具有优势。它可以有效地对非高斯分布,复杂分布,形状和密度的不变性进行分类,并且不依赖于所使用的相似性度量标准,因为学习是通过利用成对比较通过相似性矩阵进行的。但是,将频谱学习合并到3D导航体系结构中的主要困难是其静态实现。为了解决这一难题,我们在本文中提出了一种自适应框架,该框架通过使用自适应频谱学习来为用户的当前需求量身定制3D导航。

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