基于深度神经网络的人类活动和异常行为识别

R. Vrskova, R. Hudec, P. Kamencay, P. Sykora
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引用次数: 2

摘要

从视频中识别人类行为的各种异常活动是非常具有挑战性的。总体结果受到可用数据集的影响。可用的数据集包含各种异常活动,但很少集中于非标准的人类行为。在像KTH这样的数据集中,他们关注的是异常活动,比如行为的突然变化或不应该发生的物体发生,以及人类互动中的各种变化。ucf犯罪数据集中在我们更感兴趣的数据上,比如打架、虐待、爆炸或抢劫等。然而,由于视频的长度,数据集的要求非常高,它在几秒钟内包含一个给定的事件。这可能会影响用于检测事件的算法的总体结果。在本文中,我们创建了一个处理抢劫、打架、劫持、骚扰等异常活动和正常视频的数据集。我们将创建的数据集用于训练和测试神经网络ConvLSTM(卷积长短期记忆)。在建立的数据集上,采用神经网络的结构,获得了97.64%的分类准确率。
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Recognition of Human Activity and Abnormal Behavior using Deep Neural Network
Recognizing various abnormal activities of human behavior from video is very challenging. The overall results are affected by the available data-sets. The available data-sets contain various abnormal activities, but few of them focus mainly on non-standard human behavior. In data-sets such as KTH, they focus on abnormal activities such as a sudden change in behavior or an object occurrence where it should not occur but also various changes in human interaction. The UCF-crime data-set focuses on data that are more interesting to us, such as fight, abuse, explosions or robbery etc. However, the data-set is very demanding due to the videos length, which contains a given event in just a few seconds. This may affect the overall results of the algorithm used to detect the incident. In this paper, we create a data-set dealing with abnormal activities such as robbery, fight, hijack, harassment and a normal videos. We use the created data-set when training and testing the neural network ConvLSTM (Convolutional Long Short-Term Memory). We have obtained a classification accuracy of 97.64 % on the created data-set and used architecture of neural network.
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