民主化可视化5亿网络摄像头图像

Joseph D. O'Sullivan, Abby Stylianou, Austin Abrams, Robert Pless
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引用次数: 6

摘要

五年前,我们在AIPR上报道了一个新生的项目,该项目将世界上每个网络摄像头的图像存档,并开发算法来定位、校准和注释这些数据。这个户外场景档案(AMOS)现在已经发展到包括28000个现场户外摄像机和超过6.3亿张图像。从大规模环境监测到描述建筑环境变化(如在华盛顿增加自行车道)如何随着时间的推移影响身体活动模式,这些项目都在积极地使用这种方法。但是,在一个非常长期的、广泛分布的图像数据集中,最大的价值是可以分析的丰富的前数据集,以评估意外或突然事件的变化。为了便于对这些自然实验进行分析,我们建立并共享了一系列支持大规模数据驱动探索的网络工具。在这项工作中,我们讨论并激发了一种可视化工具,该工具使用PCA来寻找表征该场景变化的子空间,这种异常检测捕获了成像故障(如镜头光晕)和不寻常情况(如街头集市),并且我们给出了初始算法来聚类异常,以便可以快速评估它们是否感兴趣。
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Democratizing the visualization of 500 million webcam images
Five years ago we reported at AIPR on a nascent project to archive images from every webcam in the world and to develop algorithms to geo-locate, calibrate, and annotate this data. This archive of many outdoor scenes (AMOS) has now grown to include 28000 live outdoor cameras and over 630 million images. This is actively being used in projects ranging from large scale environmental monitoring to characterizing how built environment changes (such as adding bike lanes in DC) affects physical activity patterns over time. But the biggest value in a very long term, widely distributed image dataset is the rich set of before data that can be analyzed to evaluate changes from unexpected or sudden events. To facilitate the analysis of these natural experiments, we build and share a collection of web-tools that support large scale, data driven exploration. In this work we discuss and motivate a visualization tool that uses PCA to find the subspace that characterizes the variations in this scene, This anomaly detection captures both imaging failures such as lens flare and also unusual situations such as street fairs, and we give initial algorithm to clusters anomalies so that they can be quickly evaluated for whether they are of interest.
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