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Detection of anomalous events in shipboard video using moving object segmentation and tracking

机译:使用运动对象分割和跟踪检测船上视频中的异常事件

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Anomalous indications in monitoring equipment onboard U.S. Navy vessels must be handled in a timely manner to prevent catastrophic system failure. The development of sensor data analysis techniques to assist a ship's crew in monitoring machinery and summon required ship-to-shore assistance is of considerable benefit to the Navy. In addition, the Navy has a large interest in the development of distance support technology in its ongoing efforts to reduce manning on ships. In this paper, we present algorithms for the detection of anomalous events that can be identified from the analysis of monochromatic stationary ship surveillance video streams. The specific anomalies that we have focused on are the presence and growth of smoke and fire events inside the frames of the video stream. The algorithm consists of the following steps. First, a foreground segmentation algorithm based on adaptive Gaussian mixture models is employed to detect the presence of motion in a scene. The algorithm is adapted to emphasize gray-level characteristics related to smoke and fire events in the frame. Next, shape discriminant features in the foreground are enhanced using morphological operations. Following this step, the anomalous indication is tracked between frames using Kalman filtering. Finally, gray level shape and motion features corresponding to the anomaly are subjected to principal component analysis and classified using a multilayer perceptron neural network. The algorithm is exercised on 68 video streams that include the presence of anomalous events (such as fire and smoke) and benignuisance events (such as humans walking the field of view). Initial results show that the algorithm is successful in detecting anomalies in video streams, and is suitable for application in shipboard environments. One of the principal advantages of this technique is that the method can be applied to monitor legacy shipboard systems and environments where high-quality, color video may not be available--.
机译:必须及时处理美国海军舰船上监视设备中的异常指示,以防止灾难性系统故障。传感器数据分析技术的发展,以协助船员监视机械并召唤所需的船对岸援助,对海军具有极大的好处。此外,海军对减少远程人员配备的不断努力对远程支持技术的发展也抱有浓厚的兴趣。在本文中,我们提出了用于检测异常事件的算法,这些算法可以通过分析单色固定式船舶监视视频流来识别。我们关注的特定异常是视频流帧内烟雾和火灾事件的存在和增长。该算法包括以下步骤。首先,采用基于自适应高斯混合模型的前景分割算法来检测场景中运动的存在。该算法适用于强调与帧中烟雾和火灾事件相关的灰度级特征。接下来,使用形态学运算增强前景中的形状判别特征。此步骤之后,使用卡尔曼滤波在帧之间跟踪异常指示。最后,对与异常对应的灰度形状和运动特征进行主成分分析,并使用多层感知器神经网络对其进行分类。该算法在68个视频流上执行,这些视频流包括异常事件(例如火灾和烟雾)和良性/令人讨厌事件(例如在视场中的人类)的存在。初步结果表明,该算法成功检测出视频流中的异常现象,适用于舰载环境。该技术的主要优点之一是,该方法可用于监视传统的舰载系统和环境,在这些系统和环境中可能无法获得高质量的彩色视频- -- 。

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