基于卷积神经网络和描述子算法的拥挤视频异常检测研究综述

IF 1.7 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS International Journal of Online and Biomedical Engineering Pub Date : 2023-06-13 DOI:10.3991/ijoe.v19i07.38871
Ali Abid Hussan Altalbi, Shaimaa Hameed Shaker, Akbas Ezaldeen Ali
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引用次数: 0

摘要

根据感兴趣的上下文,异常的定义不同。在视频中不期望发生视频事件的情况下,它被视为异常。在复杂的场景中描述不常见的事件可能很困难,但这个问题通常通过使用高维特征和描述符来解决。用这些描述符创建可靠的模型是很困难的,因为它需要大量的训练样本,而且计算很复杂。时空变化或轨迹通常由提取的特征表示。提出的工作提出了大量的调查,以解决从拥挤的视频异常视频检测及其方法的问题。通过使用低级特征,如全局特征、局部特征和特征特征。为了最准确地检测和识别视频中的异常行为,并试图比较各种技术,这项工作使用了一个更拥挤和困难的数据集,并且需要通过记录和跟踪运动以及提取特征来诊断物体中的异常;因此,这些特征应该是强大的,并区分对象。在回顾之前的作品后,本作品注意到视频建模的准确性和时间的减少,因此尝试在实时和户外场景上工作。
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Anomaly Detection from Crowded Video by Convolutional Neural Network and Descriptors Algorithm: Survey
Depending on the context of interest, an anomaly is defined differently. In the case when a video event isn't expected to take place in the video, it is seen as anomaly. It can be difficult to describe uncommon events in complicated scenes, but this problem is frequently resolved by using high-dimensional features as well as descriptors. There is a difficulty in creating reliable model to be trained with these descriptors because it needs a huge number of training samples and is computationally complex. Spatiotemporal changes or trajectories are typically represented by features that are extracted. The presented work presents numerous investigations to address the issue of abnormal video detection from crowded video and its methodology. Through the use of low-level features, like global features, local features, and feature features. For the most accurate detection and identification of anomalous behavior in videos, and attempting to compare the various techniques, this work uses a more crowded and difficult dataset and require light weight for diagnosing anomalies in objects through recording and tracking movements as well as extracting features; thus, these features should be strong and differentiate objects. After reviewing previous works, this work noticed that there is more need for accuracy in video modeling and decreased time, and since attempted to work on real-time and outdoor scenes.
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来源期刊
CiteScore
4.00
自引率
46.20%
发文量
143
审稿时长
12 weeks
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