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Deep and Sparse features For Anomaly Detection and Localization in video

机译:深度和稀疏功能可用于视频中的异常检测和定位

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Detection of abnormality in video crowded scenes is highly challenging in computer vision over the past decades. We propose a method for the detection of abnormal events in surveillance video sequences. In this method, we combine the spatial-temporal convolution neural network (CNN) with handcrafted feature sets such as Histograms of Optical Flow (HOF) and Histogram of Oriented Gradients (HOG) for anomaly detection in contiguous video frames. Handcrafted features learned sparse by using our novel method which we named it Iterative Weighted nonNegative Matrix Factorization (IW-NMF) is based on sparse NMF. These feature extracted from active volume cells that included moving pixels to reduce computational costs. The architecture of the CNN model allows us to extract spatial-temporal features and using handcrafted features to increase the accuracy of detection and to ensure robustness against local noise. we evaluate our framework on popular datasets that contain abnormal activites. our method results are better than most of the other method. and achieves a very competitive detection performance compared to state-of-the-art methods.
机译:在过去的几十年中,在计算机拥挤的场景中,检测视频拥挤场景中的异常情况非常具有挑战性。我们提出了一种用于检测监视视频序列中异常事件的方法。在这种方法中,我们将时空卷积神经网络(CNN)与手工制作的特征集(例如光流直方图(HOF)和定向梯度直方图(HOG))相结合,用于连续视频帧中的异常检测。手工制作的特征是通过使用稀疏NMF的新颖方法(称为迭代加权非负矩阵因式分解(IW-NMF))来学习稀疏的。这些功能是从包含移动像素的活动体积单元中提取的,以减少计算成本。 CNN模型的体系结构使我们能够提取时空特征,并使用手工特征来提高检测的准确性并确保抵抗局部噪声的鲁棒性。我们在包含异常活动的流行数据集上评估我们的框架。我们的方法结果优于其他大多数方法。与最先进的方法相比,具有非常有竞争力的检测性能。

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