利用CNN和ConvLSTM对视频序列中的人类活动进行分类

Reema Gera, Kalyan Ram Ambati, Pallavi G. Chakole, Naveen Cheggoju, V. Kamble, V. Satpute
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引用次数: 0

摘要

视频监控对于分析给定场所的异常活动起着重要的作用。然而,摄像机只能捕捉视频信息,而不能自行确定活动的类型。因此,这种系统需要定期的人为干预和监测。这需要大量的时间和手工工作。这就需要人类活动自动识别(HAR)系统。使用计算机视觉和基于深度学习的系统等最新技术,这是可能的。在计算机视觉中,识别视频中的人类活动是一项具有挑战性的任务。智能视频系统的主要功能是对视频序列中人的动作进行准确的自动识别和标记。本研究的目的是开发一种能够从视频片段中准确识别和分类人类活动的模型。摄像头捕捉到的信息,比如视频,可以通过基于深度学习的网络来确定活动的类型。这种网络应该能够利用现有的空间和时间信息对视频进行分类。本文提出了一种对数据进行初步预处理以剔除冗余信息的框架。然后将这些数据输入深度网络来预测事件。在本文中,基于帧序列的大小提出了两种不同的HAR网络模型。一个网络只接收最重要的帧,另一个使用更长的帧序列作为时域参数来预测行为。
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Classifying Human Activities using CNN and ConvLSTM in Video Sequences
Video surveillance plays an important role to analyze any anomaly activity in the given premises. However, cameras can only capture the video information but cannot determine the type of activity on its own. Therefore, such systems require regular human intervention and monitoring. This requires a lot of time and manual efforts. This calls for the need of automatic human activity recognition (HAR) system. This is possible using latest technologies like computer vision and deep learning based systems. Recognizing human activities in videos is a challenging task in computer vision. The main function of intelligent video systems is to automatically identify and tag the actions performed by people in video sequences accurately. The objective of this research is to develop a model that can accurately recognize and classify human activities from video footage. The information captured by the cameras i.e., videos can be used to determine the type of activity using deep learning based networks. Such a network should be capable of classifying the videos using the available spatial and temporal information. In this paper, a framework is proposed where the data is pre-processed initially to reject redundant information. This data is fed then into deep network to predict the event. In this paper, for HAR, two different network models are presented based on the size of the sequence of frames. One network takes in just the most significant frame and the other uses a longer sequence of frames for predicting the behavior as a time domain parameter.
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