LOST: Longterm Observation of Scenes (with Tracks)

Applications of Computer Vision(2012)

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摘要
We introduce the Longterm Observation of Scenes (with Tracks) dataset. This dataset comprises videos taken from streaming outdoor webcams, capturing the same half hour, each day, for over a year. LOST contains rich metadata, including geolocation, day-by-day weather annotation, object detections, and tracking results. We believe that sharing this dataset opens opportunities for computer vision research involving very long-term outdoor surveillance, robust anomaly detection, and scene analysis methods based on trajectories. Efficient analysis of changes in behavior in a scene at very long time scale requires features that summarize large amounts of trajectory data in an economical way. We describe a trajectory clustering algorithm and aggregate statistics about these exemplars through time and show that these statistics exhibit strong correlations with external meta-data, such as weather signals and day of the week.
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关键词
longterm observation,pattern clustering,trajectory data,outdoor surveillance,efficient analysis,statistical analysis,robust anomaly detection,lost,day-by-day weather annotation,outdoor webcams,long time scale,geolocation,long-term outdoor surveillance,aggregate statistics,object tracking,streaming outdoor webcam,weather signal,object detection,computer vision,trajectory clustering algorithm,scene analysis method,longterm observation of scenes with track,video surveillance,geology,meteorology,trajectory,clustering algorithms
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