Supporting Independent Living for Older Adults; Employing a Visual Based Fall Detection Through Analysing the Motion and Shape of the Human Body

Falls are one of the greatest risks for older adults living alone at home. This paper presents a novel visual-based fall detection approach to support independent living for older adults through analysing the motion and shape of the human body. The proposed approach employs a new set of features to detect a fall. Motion information of a segmented silhouette when extracted can provide a useful cue for classifying different behaviours, while variation in shape and the projection histogram can be used to describe human body postures and subsequent fall events. The proposed approach presented here extracts motion information using best-fit approximated ellipse and bounding box around the human body, produces projection histograms and determines the head position over time, to generate 10 features to identify falls. These features are fed into a multilayer perceptron neural network for fall classification. Experimental results show the reliability of the proposed approach with a high fall detection rate of 99.60% and a low false alarm rate of 2.62% when tested with the UR Fall Detection dataset. Comparisons with state of the art fall detection techniques show the robustness of the proposed approach.

[1]  Bodo Rosenhahn,et al.  Outdoor and Large-Scale Real-World Scene Analysis , 2012, Lecture Notes in Computer Science.

[2]  Chih-Yang Lin,et al.  Vision-Based Fall Detection through Shape Features , 2016, 2016 IEEE Second International Conference on Multimedia Big Data (BigMM).

[3]  Ping-Min Lin,et al.  A fall detection system using k-nearest neighbor classifier , 2010, Expert Syst. Appl..

[4]  Joan Climent,et al.  Human action recognition by means of subtensor projections and dense trajectories , 2018, Pattern Recognit..

[5]  Israel Gannot,et al.  A Method for Automatic Fall Detection of Elderly People Using Floor Vibrations and Sound—Proof of Concept on Human Mimicking Doll Falls , 2009, IEEE Transactions on Biomedical Engineering.

[6]  Rui Liu,et al.  Fall detection for elderly person care in a vision-based home surveillance environment using a monocular camera , 2014, Signal Image Video Process..

[7]  Fabio Salice,et al.  Indoor Human Detection Based on Thermal Array Sensor Data and Adaptive Background Estimation , 2017, Journal of Computer and Communications.

[8]  Prachi Mukherji,et al.  Fall detection using k-nearest neighbor classification for patient monitoring , 2015, 2015 International Conference on Information Processing (ICIP).

[9]  Nigel H. Lovell,et al.  Implementation of a real-time human movement classifier using a triaxial accelerometer for ambulatory monitoring , 2006, IEEE Transactions on Information Technology in Biomedicine.

[10]  Sabri Tosunoglu,et al.  Hybrid Machine Vision Control , 2005 .

[11]  Rached Tourki,et al.  Optimized spatio-temporal descriptors for real-time fall detection: comparison of support vector machine and Adaboost-based classification , 2013, J. Electronic Imaging.

[12]  Wanqing Li,et al.  Action recognition based on a bag of 3D points , 2010, 2010 IEEE Computer Society Conference on Computer Vision and Pattern Recognition - Workshops.

[13]  Hao Chen,et al.  Human action recognition using similarity degree between postures and spectral learning , 2018, IET Comput. Vis..

[14]  Bogdan Kwolek,et al.  Event-driven system for fall detection using body-worn accelerometer and depth sensor , 2018, IET Comput. Vis..

[15]  Miguel Hernando,et al.  Home Camera-Based Fall Detection System for the Elderly , 2017, Sensors.

[16]  Alireza Rezvanian,et al.  Robust Fall Detection Using Human Shape and Multi-class Support Vector Machine , 2008, 2008 Sixth Indian Conference on Computer Vision, Graphics & Image Processing.

[17]  Nuttapong Worrakulpanit,et al.  Human Fall Detection Using Standard Deviation of C-Motion Method , 2014 .

[18]  Nader Karimi,et al.  Automatic Monocular System for Human Fall Detection Based on Variations in Silhouette Area , 2013, IEEE Transactions on Biomedical Engineering.

[19]  Emmanuel Andrès,et al.  From Fall Detection to Fall Prevention: A Generic Classification of Fall-Related Systems , 2017, IEEE Sensors Journal.

[20]  Weidong Min,et al.  Detection of Human Falls on Furniture Using Scene Analysis Based on Deep Learning and Activity Characteristics , 2018, IEEE Access.

[21]  Miao Yu,et al.  A Posture Recognition-Based Fall Detection System for Monitoring an Elderly Person in a Smart Home Environment , 2012, IEEE Transactions on Information Technology in Biomedicine.

[22]  Pengfei Li,et al.  Real-Time Tracking by Double Templates Matching Based on Timed Motion History Image with HSV Feature , 2014, TheScientificWorldJournal.

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

[24]  Michel Deriaz,et al.  F2D: A fall detection system tested with real data from daily life of elderly people , 2015, 2015 17th International Conference on E-health Networking, Application & Services (HealthCom).

[25]  Mohammed Sadgal,et al.  Skeleton-based human activity recognition for elderly monitoring systems , 2018, IET Comput. Vis..

[26]  Mohamed Ali Mahjoub,et al.  Coupled Hidden Markov Model for video fall detection , 2015, 2015 11th International Conference on Natural Computation (ICNC).

[27]  Rui-dong Wang,et al.  Fall detection algorithm for the elderly based on human characteristic matrix and SVM , 2015, 2015 15th International Conference on Control, Automation and Systems (ICCAS).

[28]  Ahmad Lotfi,et al.  Video Based Fall Detection using Features of Motion, Shape and Histogram , 2018, PETRA.

[29]  Miao Yu,et al.  An Online One Class Support Vector Machine-Based Person-Specific Fall Detection System for Monitoring an Elderly Individual in a Room Environment , 2013, IEEE Journal of Biomedical and Health Informatics.

[30]  Irene Y. H. Gu,et al.  Human fall detection in videos by fusing statistical features of shape and motion dynamics on Riemannian manifolds , 2016, Neurocomputing.

[31]  Nikolaos D. Doulamis,et al.  Iterative motion estimation constrained by time and shape for detecting persons' falls , 2010, PETRA '10.

[32]  Nadia Magnenat-Thalmann,et al.  Fall Detection Based on Body Part Tracking Using a Depth Camera , 2015, IEEE Journal of Biomedical and Health Informatics.

[33]  Dan Meng,et al.  Automatic fall detection of human in video using combination of features , 2016, 2016 IEEE International Conference on Bioinformatics and Biomedicine (BIBM).

[34]  José María Conejero,et al.  A Vision-Based Approach for Building Telecare and Telerehabilitation Services , 2016, Sensors.

[35]  Andrew Blake,et al.  Efficient Human Pose Estimation from Single Depth Images , 2013, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[36]  Manoochehr Nahvi,et al.  An intelligent video surveillance system for fall and anesthesia detection for elderly and patients , 2015, 2015 2nd International Conference on Pattern Recognition and Image Analysis (IPRIA).

[37]  Bart Vanrumste,et al.  Camera-Based Fall Detection on Real World Data , 2011, Theoretical Foundations of Computer Vision.

[38]  S. Miaou,et al.  A Customized Human Fall Detection System Using Omni-Camera Images and Personal Information , 2006, 1st Transdisciplinary Conference on Distributed Diagnosis and Home Healthcare, 2006. D2H2..

[39]  C. Rougier,et al.  Monocular 3D Head Tracking to Detect Falls of Elderly People , 2006, 2006 International Conference of the IEEE Engineering in Medicine and Biology Society.

[40]  Baharak Shakeri Aski,et al.  Intelligent video surveillance for monitoring fall detection of elderly in home environments , 2008, 2008 11th International Conference on Computer and Information Technology.

[41]  Jean Meunier,et al.  Fall Detection from Human Shape and Motion History Using Video Surveillance , 2007, 21st International Conference on Advanced Information Networking and Applications Workshops (AINAW'07).

[42]  Ahmad Lotfi,et al.  Video Based Fall Detection with Enhanced Motion History Images , 2016, PETRA.

[43]  Irene Y. H. Gu,et al.  Fall detection in RGB-D videos for elderly care , 2015, 2015 17th International Conference on E-health Networking, Application & Services (HealthCom).

[44]  Chandrika Kamath,et al.  Robust techniques for background subtraction in urban traffic video , 2004, IS&T/SPIE Electronic Imaging.