+高级检索
基于深度学习特征的异常行为检测
DOI:
作者:
作者单位:

作者简介:

通讯作者:

基金项目:


Abnormal Behavior Detection Based on Deep-Learned Features
Author:
Affiliation:

Fund Project:

  • 摘要
  • |
  • 图/表
  • |
  • 访问统计
  • |
  • 参考文献
  • |
  • 相似文献
  • |
  • 引证文献
  • |
  • 资源附件
    摘要:

    已有的异常行为检测大多采用人工特征,然而人工特征计算复杂度高且在复杂场景下很难选择和设计一种有效的行为特征.为了解决这一问题,结合堆积去噪编码器和改进的稠密轨迹,提出了一种基于深度学习特征的异常行为检测方法.为了有效地描述行为,利用堆积去噪编码器分别提取行为的外观特征和运动特征,同时为了减少计算复杂度,将特征提取约束在稠密轨迹的空时体积中;采用词包法将特征转化为行为视觉词表示,并利用加权相关性方法进行特征融合以提高特征的分类能力.最后,采用稀疏重建误差判断行为的异常.在公共数据库CAVIAR和BOSS上对该方法进行了验证,并与其它方法进行了对比试验,结果表明了该方法的有效性.

    Abstract:

    Most existing methods of abnormal behavior detection merely use hand-crafted features to represent behavior,which may be costly. Moreover,choice and design of hand-crafted features can be difficult in the complex scene without prior knowledge. In order to solve this problem,combining the stacked denoising autoencoders (SDAE) and improved dense trajectories,a new approach for abnormal behavior detection was proposed by using deep-learned features. To effectively represent the object behavior,two SDAE were utilized to automatically learn appearance feature and motion feature,respectively,which were constrained in the space-time volume of dense trajectories to reduce the computational complexity. The vision words were also exploited to describe the behavior using the method of bag of words. In order to enhance the discriminating power of these features,a novel method was adopted for feature fusing by using weighted correlation similarity measurement. The sparse representation was applied to detect abnormal behaviors via sparse reconstruction costs. Experiments results show the effectiveness of the proposed method in comparison with other state-of-the-art methods on the public databases CAVIAR and BOSS for abnormal behavior detection.

    参考文献
    相似文献
    引证文献
文章指标
  • PDF下载次数:
  • HTML阅读次数:
  • 摘要点击次数:
  • 引用次数:
引用本文

王军,夏利民.基于深度学习特征的异常行为检测[J].湖南大学学报:自然科学版,2017,44(10):130~138

复制
历史
  • 收稿日期:
  • 最后修改日期:
  • 录用日期:
  • 在线发布日期: 2017-10-30
  • 出版日期:
作者稿件一经被我刊录用,如无特别声明,即视作同意授予我刊论文整体的全部复制传播的权利,包括但不限于复制权、发行权、信息网络传播权、广播权、表演权、翻译权、汇编权、改编权等著作使用权转让给我刊,我刊有权根据工作需要,允许合作的数据库、新媒体平台及其他数字平台进行数字传播和国际传播等。特此声明。
关闭