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Joint Manifolds for Data Fusion

机译:数据融合的联合歧管

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The emergence of low-cost sensing architectures for diverse modalities has made it possible to deploy sensor networks that capture a single event from a large number of vantage points and using multiple modalities. In many scenarios, these networks acquire large amounts of very high-dimensional data. For example, even a relatively small network of cameras can generate massive amounts of high-dimensional image and video data. One way to cope with this data deluge is to exploit low-dimensional data models. Manifold models provide a particularly powerful theoretical and algorithmic framework for capturing the structure of data governed by a small number of parameters, as is often the case in a sensor network. However, these models do not typically take into account dependencies among multiple sensors. We thus propose a new joint manifold framework for data ensembles that exploits such dependencies. We show that joint manifold structure can lead to improved performance for a variety of signal processing algorithms for applications including classification and manifold learning. Additionally, recent results concerning random projections of manifolds enable us to formulate a scalable and universal dimensionality reduction scheme that efficiently fuses the data from all sensors.
机译:适用于各种模式的低成本传感架构的出现使部署传感器网络成为可能,该传感器网络可以从大量有利位置捕获单个事件并使用多种模式。在许多情况下,这些网络获取大量的高维数据。例如,即使是相对较小的摄像机网络也可以生成大量的高维图像和视频数据。应对这种数据泛滥的一种方法是利用低维数据模型。流形模型提供了一种特别强大的理论和算法框架,可用于捕获由少量参数控制的数据结构,这在传感器网络中通常是这样。但是,这些模型通常不考虑多个传感器之间的依赖性。因此,我们为利用这种依赖性的数据集合提出了一个新的联合流形框架。我们证明了联合流形结构可以提高包括分类和流形学习在内的各种信号处理算法的性能。此外,有关歧管随机投影的最新结果使我们能够制定可扩展且通用的降维方案,该方案可有效融合所有传感器的数据。

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