可疑活动的少镜头时空异常检测模型

Nouman Aziz, Wasif Muhammad, Irfan Qaiser, Ali Asghar, M. J. Irshad, Y. Bilal
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引用次数: 0

摘要

卷积神经网络(CNN)在最近的目标识别和目标检测应用中表现较好,特别是对图像数据,但CNN的问题是它们需要标签作为学习信号。在一个特定的环境中标记所有类型的异常是完全不可能的。用于视频异常检测的无监督方法的缺点是需要太多的数据,因此需要使用未标记的数据产生准确的结果,这反过来又增加了计算成本。本文提出了一种利用时空自编码器模型检测视频可疑活动的少镜头异常检测方法,该方法在训练过程中不需要任何标记,而且与传统的无监督深度学习方法相比,计算成本也非常低。时空自编码器模型由两个部分组成。空间自编码器用于空间特征表示,时间自编码器从时间维度提取特征。少拍异常检测技术是指在每批训练循环中选取少量的图像,并在这些图像上训练模型。最后对所有图像的学习进行平均,并取所有批次的平均损失来计算重建的损失。与其他无监督异常检测方法相比,在Avenue数据集上的实验结果得到了更好的结果,并且计算成本更低。
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Few Shot Spatio-Temporal Anomaly Detection Model For Suspicious Activities
Convolutional Neural Network (CNN) has performed better for recent application of object recognition and object detection especially for image data but problem with CNN is that they require labels as learning signals. It is quite impossible to label all types of anomalies in a particular environment. Unsupervised methods used for video anomaly detection has drawback that they require too much data so that accurate results should be produced using unlabeled data which in turn increases computational cost. For this research a Few shot anomaly detection method is introduced using spatio-temporal autoencoder model for detecting suspicious activities in videos is proposed which doesn’t require any labels during training and also has very less computational cost then traditional unsupervised deep learning methods. Spatiotemporal autoencoder model has two components. Spatial autoencoder is used for spatial feature representation while temporal autoencoder extracts features from temporal dimensions. Few shot anomaly detection technique comprises the fact that it takes few images in each batch of training loop and trains the model on those images. At last averages the learning of all images and compute the loss for reconstruction by taking average loss of all batches. Experimental results on Avenue Dataset gives better results and achieves much lesser computational cost then other unsupervised anomaly detection methods.
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