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首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >A Comparative Study of Transfer Learning Approaches for Video Anomaly Detection
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A Comparative Study of Transfer Learning Approaches for Video Anomaly Detection

机译:视频异常检测转移学习方法的比较研究

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摘要

Recent research has shown that features obtained from pretrained Convolutional Neural Network (CNN) models can be promptly applied to a variety of problems they were not originally designed to solve. This concept, often referred to as Transfer Learning (TL), is a common practice when labeled data is limited. In some fields, such as video anomaly detection, TL is still an underexplored subject in the sense that it is not clear whether the architecture of the pretrained CNN model impacts on the video anomaly detection performance. In order to clarify this issue, we perform an extensive benchmark using 12 different pretrained CNN models on ImageNet as feature extractors and apply the features obtained to seven video anomaly detection benchmark datasets. This work presents some interesting findings about video anomaly detection using TL. The highlights of our findings were revealed by our experiments, which have shown that a simple classification process using One-Class Support Vector Machines yields similar results to state-of-the-art models. Moreover, a statistical analysis suggests that architectural differences are negligible when choosing a pretrained model for video anomaly detection, since all models presented similar performance. At last, we present an in-depth visual analysis of the Avenue dataset, and reveal several aspects that may be limiting the performance of state-of-the-art video anomaly detection methods.
机译:最近的研究表明,从预制卷积神经网络(CNN)模型获得的功能可以及时应用于它们最初设计用于解决的各种问题。这种概念通常被称为转移学习(TL),是当标记数据有限时的常见做法。在某些领域(例如视频异常检测),TL仍然是一个未惊极的主题,因为它不清楚普雷雷达的CNN模型是否对视频异常检测性能的影响。为了澄清此问题,我们在ImageNet上使用12种不同的预押卡网模型执行广泛的基准,作为特征提取器,并将获得的功能应用于七个视频异常检测基准数据集。这项工作介绍了使用TL的视频异常检测的一些有趣的结果。我们的研究结果揭示了我们的实验,这表明使用单级支持向量机的简单分类过程产生了与最先进的模型类似的结果。此外,统计分析表明,在选择视频异常检测的预磨模模型时,架构差异可以忽略不计,因为所有模型都呈现了类似的性能。最后,我们对大道数据集进行了深入的视觉分析,并揭示了可能限制最先进的视频异常检测方法性能的几个方面。

著录项

  • 来源
  • 作者单位

    Fed Univ Technol Parana UTFPR Lab Bioinformat & Computat Intelligence Ave Sete Setembro 3165 BR-80230901 Curitiba Parana Brazil;

    Fed Univ Technol Parana UTFPR Lab Bioinformat & Computat Intelligence Ave Sete Setembro 3165 BR-80230901 Curitiba Parana Brazil;

    Fed Univ Technol Parana UTFPR Lab Bioinformat & Computat Intelligence Ave Sete Setembro 3165 BR-80230901 Curitiba Parana Brazil;

    Fed Univ Technol Parana UTFPR Lab Bioinformat & Computat Intelligence Ave Sete Setembro 3165 BR-80230901 Curitiba Parana Brazil;

    Fed Univ Technol Parana UTFPR Lab Bioinformat & Computat Intelligence Ave Sete Setembro 3165 BR-80230901 Curitiba Parana Brazil;

    Fed Univ Technol Parana UTFPR Lab Bioinformat & Computat Intelligence Ave Sete Setembro 3165 BR-80230901 Curitiba Parana Brazil;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Transfer learning; anomaly detection; dataset analysis; deep learning;

    机译:转移学习;异常检测;数据集分析;深度学习;

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