Moving object detection for unseen videos via truncated weighted robust principal component analysis and salience convolution neural network

被引:0
|
作者
Yang Li
机构
[1] Jiangsu Vocational College of Information Technology,School of IoT Engineering (School of Information Security)
来源
关键词
Moving object detection; Convolution neural network; Truncated weighted robust principal component analysis; Salience; Unseen videos;
D O I
暂无
中图分类号
学科分类号
摘要
Moving object detection is a basic and important work in intelligent video analysis. Recently, a lot of methods have sprung up. Among them, the methods based on deep learning have achieved very amazing results. However, the methods based on deep learning rely on special annotated data to train the model. Thus they have weak generalization ability and can only deal with the data related to the training data. In order to handle this issue, this paper proposes a method based on Truncated Weighted Robust Principal Component Analysis and Salience Convolution Neural Network. Unlike other deep learning methods, the input of the proposed method does not contain the scene information. The proposed method uses the salient information obtained by the proposed Truncated Weighted Robust Principal Component Analysis as input. This improves the generalization ability of the proposed method. The experimental results show the superior performance of the proposed method for unseen videos on CDNET 2014 database.
引用
收藏
页码:32779 / 32790
页数:11
相关论文
共 50 条
  • [41] Robust object tracking via online Principal Component–Canonical Correlation Analysis (P3CA)
    Yuxia Wang
    Qingjie Zhao
    Signal, Image and Video Processing, 2015, 9 : 159 - 174
  • [42] A framework to automate fault detection and diagnosis based on moving window principal component analysis and Bayesian network
    de Andrade Melani, Arthur Henrique
    de Carvalho Michalski, Miguel Angelo
    da Silva, Renan Favarao
    Martha de Souza, Gilberto Francisco
    RELIABILITY ENGINEERING & SYSTEM SAFETY, 2021, 215
  • [43] A Comparison of Robust Principal Component Analysis Techniques for Buried Object Detection in Downward Looking GPR Sensor Data
    Pinar, Anthony
    Havens, Timothy C.
    Rice, Joseph
    Masarik, Matthew
    Burns, Joseph
    Thelen, Brian
    DETECTION AND SENSING OF MINES, EXPLOSIVE OBJECTS, AND OBSCURED TARGETS XXI, 2016, 9823
  • [44] Principal Component Analysis and Prediction of Students' Physical Health Standard Test Results Based on Recurrent Convolution Neural Network
    Hou, Kai
    WIRELESS COMMUNICATIONS & MOBILE COMPUTING, 2021, 2021
  • [45] A mutated intrusion detection system using principal component analysis and time delay neural network
    Kang, Byoung-Doo
    Lee, Jae-Won
    Kim, Jong-Ho
    Kwon, O-Hwa
    Seong, Chi-Young
    Park, Se-Myung
    Kim, Sang-Kyoon
    ADVANCES IN NEURAL NETWORKS - ISNN 2006, PT 3, PROCEEDINGS, 2006, 3973 : 246 - 254
  • [46] Moving Object Detection in Satellite Videos via Spatial-Temporal Tensor Model and Weighted Schatten p-Norm Minimization
    Yin, Qian
    Liu, Ting
    Lin, Zaiping
    An, Wei
    Guo, Yulan
    IEEE GEOSCIENCE AND REMOTE SENSING LETTERS, 2022, 19
  • [47] Detection of small objects in image data based on the nonlinear principal component analysis neural network
    Liu, ZJ
    Chen, CY
    Shen, XB
    Zou, XC
    OPTICAL ENGINEERING, 2005, 44 (09)
  • [48] Detection of Hypertensive Retinopathy using Principal Component Analysis (PCA) and Backpropagation Neural Network Methods
    Arasy, Rahmat
    Basari
    3RD BIOMEDICAL ENGINEERING'S RECENT PROGRESS IN BIOMATERIALS, DRUGS DEVELOPMENT, AND MEDICAL DEVICES, 2019, 2092
  • [49] Robust principal component analysis via weighted nuclear norm with modified second-order total variation regularization
    Dou, Yi
    Liu, Xinling
    Zhou, Min
    Wang, Jianjun
    VISUAL COMPUTER, 2023, 39 (08): : 3495 - 3505
  • [50] Robust principal component analysis via weighted nuclear norm with modified second-order total variation regularization
    Yi Dou
    Xinling Liu
    Min Zhou
    Jianjun Wang
    The Visual Computer, 2023, 39 : 3495 - 3505