基于快速子集PCA的延时图像探索性分析

Austin Abrams, Emily Feder, Robert Pless
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引用次数: 5

摘要

在监视和环境监测应用中,通常会有数百万张特定场景的图像。虽然有工具可以发现特定的事件、异常、人类行为和行为,但很少有工具可以在数据中进行更多的探索性搜索。本文提出了对PCA的修改,使用户能够快速重新计算数据的空间和时间子集的低秩分解。该过程比一般PCA更快地返回分解数量级,并且在重建误差方面接近最佳。我们将展示跨多个应用程序(包括一个交互式web应用程序)进行实际探索性数据分析的示例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploratory analysis of time-lapse imagery with fast subset PCA
In surveillance and environmental monitoring applications, it is common to have millions of images of a particular scene. While there exist tools to find particular events, anomalies, human actions and behaviors, there has been little investigation of tools which allow more exploratory searches in the data. This paper proposes modifications to PCA that enable users to quickly recompute low-rank decompositions for select spatial and temporal subsets of the data. This process returns decompositions orders of magnitude faster than general PCA and are close to optimal in terms of reconstruction error. We show examples of real exploratory data analysis across several applications, including an interactive web application.
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