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AUTOMATICALLY DETECTING 'SIGNIFICANT EVENTS' ON SenseCam

机译:在SenseCam上自动检测“重大事件”

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摘要

SenseCam is an effective memory-aid device that can automatically record images and other data from the wearer's whole day. The main issue is that, while SenseCam produces a sizeable collection of images over the time period, the vast quantity of captured data contains a large percentage of routine events, which are of little interest to review. In this article, the aim is to detect "Significant Events" for the wearers. We use several time series analysis methods such as Detrended Fluctuation Analysis (DFA), Eigenvalue dynamics and Wavelet Correlations to analyse the multiple time series generated by the SenseCam. We show that Detrended Fluctuation Analysis exposes a strong long-range correlation relationship in SenseCam collections. Maximum Overlap Discrete Wavelet Transform (MODWT) was used to calculate equal-time Correlation Matrices over different time scales and then explore the granularity of the largest eigenvalue and changes of the ratio of the sub-dominant eigenvalue spectrum dynamics over sliding time windows. By examination of the eigenspectrum, we show that these approaches enable detection of major events in the time SenseCam recording, with MODWT also providing useful insight on details of major events. We suggest that some wavelet scales (e.g., 8 minutes-16 minutes) have the potential to identify distinct events or activities.
机译:SenseCam是一种有效的记忆辅助设备,可以自动记录穿戴者全天的图像和其他数据。主要问题是,虽然SenseCam在一段时间内会生成大量的图像集合,但捕获的大量数据包含很大比例的例行事件,因此很少需要复查。在本文中,目的是为佩戴者检测“重要事件”。我们使用诸如去趋势波动分析(DFA),特征值动力学和小波相关性等几种时间序列分析方法来分析SenseCam生成的多个时间序列。我们表明,去趋势波动分析揭示了SenseCam集合中的强长期关联关系。使用最大重叠离散小波变换(MODWT)计算不同时间尺度上的等时相关矩阵,然后探索最大特征值的粒度以及滑动时间窗口上次主要特征值频谱动力学比率的变化。通过检查本征谱,我们发现这些方法可以检测SenseCam记录中的重大事件,而MODWT还可以提供有关重大事件细节的有用见解。我们建议某些小波尺度(例如8分钟至16分钟)有可能识别出不同的事件或活动。

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