基于光流和神经网络的视频监控跟踪与异常行为检测

Nida Rasheed, S. Khan, A. Khalid
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引用次数: 29

摘要

需要一种异常行为检测算法来正确识别目标是正常运动还是混沌运动。本文为此目的开发了一个模型。该算法的独特之处在于使用高斯混合(FGMM)模型进行前景检测,然后使用Lucas-Kanade方法将视频帧传递给光流模型。提取感兴趣对象的每个像素相关的水平和垂直位移和方向信息。然后将这些特征输入前馈神经网络进行分类和仿真。对实时视频和部分合成视频进行了研究。利用神经网络的性能参数对方法的精度进行了计算。将该模型与普通光流模型进行了比较,得到了无噪声的改进结果。正确识别类的总体性能等于3.4e-02,错误率为2.5。
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Tracking and Abnormal Behavior Detection in Video Surveillance Using Optical Flow and Neural Networks
An abnormal behavior detection algorithm for surveillance is required to correctly identify the targets as being in a normal or chaotic movement. A model is developed here for this purpose. The uniqueness of this algorithm is the use of foreground detection with Gaussian mixture (FGMM) model before passing the video frames to optical flow model using Lucas-Kanade approach. Information of horizontal and vertical displacements and directions associated with each pixel for object of interest is extracted. These features are then fed to feed forward neural network for classification and simulation. The study is being conducted on the real time videos and some synthesized videos. Accuracy of method has been calculated by using the performance parameters for Neural Networks. In comparison of plain optical flow with this model, improved results have been obtained without noise. Classes are correctly identified with an overall performance equal to 3.4e-02 with & error percentage of 2.5.
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