Robust Abnormal Event Recognition via Motion and Shape Analysis at ATM Installations

Automated teller machines (ATM) are widely being used to carry out banking transactions and are becoming one of the necessities of everyday life. ATMs facilitate withdrawal, deposit, and transfer of money fromone account to another round the clock. However, this convenience is marred by criminal activities like money snatching and attack on customers, which are increasingly affecting the security of bank customers. In this paper, we propose a video based framework that efficiently identifies abnormal activities happening at the ATM installations and generates an alarm during any untoward incidence. The proposed approach makes use of motion history image (MHI) and Humoments to extract relevant features fromvideo. Principle component analysis has been used to reduce the dimensionality of features and classification has been carried out by using support vector machine. Analysis has been carried out on different video sequences by varying the window size of MHI. The proposed framework is able to distinguish the normal and abnormal activities like money snatching, harm to the customer by virtue of fight, or attack on the customer with an average accuracy of 95.73%.

[1]  Rahul Sukthankar,et al.  Violence Detection in Video Using Computer Vision Techniques , 2011, CAIP.

[2]  Navneet Sharma,et al.  ANALYSIS OF DIFFERENT VULNERABILITIES IN AUTO TELLER MACHINE TRANSACTIONS , 2012 .

[3]  Mohiuddin Ahmad,et al.  Human action recognition using shape and CLG-motion flow from multi-view image sequences , 2008, Pattern Recognit..

[4]  James W. Davis,et al.  The Recognition of Human Movement Using Temporal Templates , 2001, IEEE Trans. Pattern Anal. Mach. Intell..

[5]  Ming-Kuei Hu,et al.  Visual pattern recognition by moment invariants , 1962, IRE Trans. Inf. Theory.

[6]  Ronald Poppe,et al.  A survey on vision-based human action recognition , 2010, Image Vis. Comput..

[7]  Vittorio Murino,et al.  Multi-class Classification on Riemannian Manifolds for Video Surveillance , 2010, ECCV.

[8]  M. Kalaiselvi Geetha,et al.  Motion Intensity Code for Action Recognition in Video Using PCA and SVM , 2013, MIKE.

[9]  Gary R. Bradski,et al.  Learning OpenCV 3: Computer Vision in C++ with the OpenCV Library , 2016 .

[10]  A. Amato,et al.  Semantic classification of human behaviors in video surveillance systems , 2011 .

[11]  Manoranjan Paul,et al.  Human detection in surveillance videos and its applications - a review , 2013, EURASIP J. Adv. Signal Process..

[12]  Bart Vanrumste,et al.  Camera Based Fall Detection Using Multiple Features Validated with Real Life Video , 2011, Intelligent Environments.

[13]  Hafiz Imtiaz,et al.  Action recognition based on statistical analysis from clustered flow vectors , 2014, Signal Image Video Process..

[14]  Chih-Jen Lin,et al.  LIBSVM: A library for support vector machines , 2011, TIST.

[15]  Changsheng Xu,et al.  Inductive Robust Principal Component Analysis , 2012, IEEE Transactions on Image Processing.

[16]  Alex Zelinsky,et al.  Learning OpenCV---Computer Vision with the OpenCV Library (Bradski, G.R. et al.; 2008)[On the Shelf] , 2009, IEEE Robotics & Automation Magazine.

[17]  Alper Yilmaz,et al.  Planar shape representation and matching under projective transformation , 2011, Comput. Vis. Image Underst..

[18]  James W. Davis,et al.  The representation and recognition of human movement using temporal templates , 1997, Proceedings of IEEE Computer Society Conference on Computer Vision and Pattern Recognition.

[19]  Caroline Fossati,et al.  Comparison of shape descriptors for hand posture recognition in video , 2012, Signal Image Video Process..

[20]  Jean-Luc Dugelay,et al.  Efficient scarf detection prior to face recognition , 2010, 2010 18th European Signal Processing Conference.

[21]  Jaeho Lee,et al.  Human Action Recognition Using Ordinal Measure of Accumulated Motion , 2010, EURASIP J. Adv. Signal Process..

[22]  Hongcheng Wang,et al.  Spatial-temporal structural and dynamics features for Video Fire Detection , 2013, 2013 IEEE Workshop on Applications of Computer Vision (WACV).

[23]  Nicu Sebe,et al.  Real Time Detection of Social Interactions in Surveillance Video , 2012, ECCV Workshops.

[24]  Md. Atiqur Rahman Ahad,et al.  Motion history image: its variants and applications , 2012, Machine Vision and Applications.

[25]  Larry S. Davis,et al.  AVSS 2011 demo session: A large-scale benchmark dataset for event recognition in surveillance video , 2011, AVSS.

[26]  F. Xavier Roca,et al.  Human action recognition based on estimated weak poses , 2012, EURASIP J. Adv. Signal Process..