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Learning Object Motion Patterns for Anomaly Detection and Improved Object Detection

机译:学习异常检测和改进对象检测的对象运动模式

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We present a novel framework for learning patterns of motion and sizes of objects in static camera surveillance. The proposed method provides a new higher-level layer to the traditional surveillance pipeline for anomalous event detection and scene model feedback. Pixel level probability density functions (pdfs) of appearance have been used for background modelling in the past, but modelling pixel level pdfs of object speed and size from the tracks is novel. Each pdf is modelled as a multivariate Gaussian Mixture Model (GMM) of the motion (destination location & transition time) and the size (width & height) parameters of the objects at that location. Output of the tracking module is used to perform unsupervised EM-based learning of every GMM. We have successfully used the proposed scene model to detect local as well as global anomalies in object tracks. We also show the use of this scene model to improve object detection through pixel-level parameter feedback of the minimum object size and background learning rate. Most object path modelling approaches first cluster the tracks into major paths in the scene, which can be a source of error. We avoid this by building local pdfs that capture a variety of tracks which are passing through them. Qualitative and quantitative analysis of actual surveillance videos proved the effectiveness of the proposed approach.
机译:我们在静态相机监控中提出了一种学习运动和大小的学习模式的新框架。该方法为传统监控管线提供了一种新的高级层,用于异常事件检测和场景模型反馈。像素级概率密度函数(PDF)过去已用于过去的背景建模,但是从轨道的对象速度和大小的建模像素级别PDF是新颖的。每个PDF被建模为运动(目的地位置和转变时间)的多变量高斯混合模型(GMM)和该位置对象的尺寸(宽度和高度)参数。跟踪模块的输出用于执行每个GMM的基于GMM的无监督的EM。我们已成功使用所提出的场景模型来检测对象轨道中的本地以及全局异常。我们还显示使用此场景模型来改善对象检测通过像素级参数反馈的最小对象大小和背景学习率。大多数对象路径建模方法将首先将曲目聚集到场景中的主要路径中,这可以是错误的源。我们通过构建本地PDF来避免这一点,捕获通过它们的各种轨道。实际监测视频的定性和定量分析证明了提出的方法的有效性。

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