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Abnormal sound event detection using temporal trajectories mixtures

机译:使用时间轨迹混合的异常声音事件检测

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Detection of anomalous sound events in audio surveillance is a challenging task when applied to realistic settings. Part of the difficulty stems from properly defining the ???normal??? behavior of a crowd or an environment (e.g. airport, train station, sport field). By successfully capturing the heterogeneous nature of sound events in an acoustic environment, we can use it as a reference against which anomalous behavior can be detected in continuous audio recordings. The current study proposes a methodology for representing sound classes using a hierarchical network of convolutional features and mixture of temporal trajectories (MTT). The framework couples unsupervised and supervised learning and provides a robust scheme for detection of abnormal sound events in a subway station. The results reveal the strength of the proposed representation in capturing non-trivial commonalities within a single sound class and variabilities across different sound classes as well as high degree of robustness in noise.
机译:在应用于现实设置时,检测音频监控中的异常声音事件是一个具有挑战性的任务。部分难度源于正确定义???正常???人群或环境的行为(例如机场,火车站,运动场)。通过成功捕获声学环境中声音事件的异构性质,我们可以将其用作可以在连续录音中检测到异常行为的参考。目前的研究提出了一种用卷积特征的分层网络和时间轨迹(MTT)的混合来表示声音类的方法。该框架耦合无监督和监督的学习,并提供了一种稳健的方案,用于检测地铁站中的异常声音事件。结果揭示了所提出的代表在不同声学课程的单一声音课程和变换中捕获非琐事共性的强度以及噪音中的高度鲁棒性。

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