Continuous detection of human fall using multimodal features from Kinect sensors in scalable environment

BACKGROUND AND OBJECTIVES Automatic detection of human fall is a key problem in video surveillance and home monitoring. Existing methods using unimodal data (RGB / depth / skeleton) may suffer from the drawbacks of inadequate lighting condition or unreliability. Besides, most of proposed methods are constrained to a small space with off-line video stream. METHODS In this study, we overcome these encountered issues by combining multi-modal features (skeleton and RGB) from Kinect sensor to take benefits of each data characteristic. If a skeleton is available, we propose a rules based technique on the vertical velocity and the height to floor plane of the human center. Otherwise, we compute a motion map from a continuous gray-scale image sequence, represent it by an improved kernel descriptor then input to a linear Support Vector Machine. This combination speeds up the proposed system and avoid missing detection at an unmeasurable range of the Kinect sensor. We then deploy this method with multiple Kinects to deal with large environments based on client server architecture with late fusion techniques. RESULTS We evaluated the method on some freely available datasets for fall detection. Compared to recent methods, our method has a lower false alarm rate while keeping the highest accuracy. We also validated on-line our system using multiple Kinects in a large lab-based environment. Our method obtained an accuracy of 91.5% at average frame-rate of 10fps. CONCLUSIONS The proposed method using multi-modal features obtained higher results than using unimodal features. Its on-line deployment on multiple Kinects shows the potential to be applied in to any of living space in reality.

[1]  Thanh-Hai Tran,et al.  How Good Is Kernel Descriptor on Depth Motion Map for Action Recognition , 2015, ICVS.

[2]  Rémy Mullot,et al.  A new hand representation based on kernels for hand posture recognition , 2015, 2015 11th IEEE International Conference and Workshops on Automatic Face and Gesture Recognition (FG).

[3]  Yoong Choon Chang,et al.  A simple vision-based fall detection technique for indoor video surveillance , 2015, Signal Image Video Process..

[4]  M. Kangas,et al.  Determination of simple thresholds for accelerometry-based parameters for fall detection , 2007, 2007 29th Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[5]  Yong Du,et al.  Hierarchical recurrent neural network for skeleton based action recognition , 2015, 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).

[6]  Ennio Gambi,et al.  A Depth-Based Fall Detection System Using a Kinect® Sensor , 2014, Sensors.

[7]  Bogdan Kwolek,et al.  Human fall detection on embedded platform using depth maps and wireless accelerometer , 2014, Comput. Methods Programs Biomed..

[8]  Thi-Lan Le,et al.  An analysis on human fall detection using skeleton from Microsoft kinect , 2014, 2014 IEEE Fifth International Conference on Communications and Electronics (ICCE).

[9]  Haibo Wang,et al.  Depth-Based Human Fall Detection via Shape Features and Improved Extreme Learning Machine , 2014, IEEE Journal of Biomedical and Health Informatics.

[10]  Abbes Amira,et al.  Optimization and evaluation of the human fall detection system , 2016, Remote Sensing.

[11]  Vassilis Athitsos,et al.  A survey on vision-based fall detection , 2015, PETRA.

[12]  Scott T. Acton,et al.  UGraSP: A unified framework for activity recognition and person identification using graph signal processing , 2015, 2015 IEEE International Conference on Image Processing (ICIP).

[13]  Tanushyam Chattopadhyay,et al.  Action recognition using joint coordinates of 3D skeleton data , 2015, 2015 IEEE International Conference on Image Processing (ICIP).

[14]  Inmaculada Plaza,et al.  Challenges, issues and trends in fall detection systems , 2013, Biomedical engineering online.

[15]  A K Bourke,et al.  Evaluation of a threshold-based tri-axial accelerometer fall detection algorithm. , 2007, Gait & posture.

[16]  Franck Multon,et al.  Fall Detection With Multiple Cameras: An Occlusion-Resistant Method Based on 3-D Silhouette Vertical Distribution , 2011, IEEE Transactions on Information Technology in Biomedicine.

[17]  Dieter Fox,et al.  Kernel Descriptors for Visual Recognition , 2010, NIPS.

[18]  Bogdan Kwolek,et al.  Unobtrusive Fall Detection at Home Using Kinect Sensor , 2013, CAIP.

[19]  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..

[20]  Irene Y. H. Gu,et al.  Human fall detection via shape analysis on Riemannian manifolds with applications to elderly care , 2015, 2015 IEEE International Conference on Image Processing (ICIP).

[21]  Marco La Cascia,et al.  3D skeleton-based human action classification: A survey , 2016, Pattern Recognit..

[22]  Dimitrios Makris,et al.  Fall detection system using Kinect’s infrared sensor , 2014, Journal of Real-Time Image Processing.

[23]  Abderrahim Elmoataz,et al.  Image and Signal Processing, 4th International Conference, ICISP 2010, Trois-Rivières, QC, Canada, June 30-July 2, 2010. Proceedings , 2010, ICISP.

[24]  Jiaxing Li,et al.  Development of a Fall Detection System with Microsoft Kinect , 2012, RiTA.

[25]  Bogdan Kwolek,et al.  Improving fall detection by the use of depth sensor and accelerometer , 2015, Neurocomputing.

[26]  Nasser Kehtarnavaz,et al.  Action Recognition from Depth Sequences Using Depth Motion Maps-Based Local Binary Patterns , 2015, 2015 IEEE Winter Conference on Applications of Computer Vision.

[27]  Xiaodong Yang,et al.  Recognizing actions using depth motion maps-based histograms of oriented gradients , 2012, ACM Multimedia.

[28]  Rita Cucchiara,et al.  A multi‐camera vision system for fall detection and alarm generation , 2007, Expert Syst. J. Knowl. Eng..

[29]  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.

[30]  Marjorie Skubic,et al.  Fall Detection in Homes of Older Adults Using the Microsoft Kinect , 2015, IEEE Journal of Biomedical and Health Informatics.

[31]  Jeffrey M. Hausdorff,et al.  Evaluation of Accelerometer-Based Fall Detection Algorithms on Real-World Falls , 2012, PloS one.

[32]  Martin Kampel,et al.  Fusion of Data from Multiple Cameras for Fall Detection , 2010 .

[33]  G. G. Stokes "J." , 1890, The New Yale Book of Quotations.

[34]  S. Goldsack,et al.  IN REAL-TIME , 2008 .

[35]  Ling Shao,et al.  A survey on fall detection: Principles and approaches , 2013, Neurocomputing.

[36]  Yeh-Liang Hsu,et al.  A Review of Accelerometry-Based Wearable Motion Detectors for Physical Activity Monitoring , 2010, Sensors.

[37]  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).

[38]  James M. Keller,et al.  Linguistic summarization of video for fall detection using voxel person and fuzzy logic , 2009, Comput. Vis. Image Underst..

[39]  A. Singh Challenges " # , 2006 .

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

[41]  Franck Multon,et al.  Fall Detection Using Body Volume Recontruction and Vertical Repartition Analysis , 2010, ICISP.

[42]  Martin Kampel,et al.  Early versus Late Fusion in a Multiple Camera Network for Fall Detection ∗ , 2010 .

[43]  Eric Castelli,et al.  Improvements of RGB-D hand posture recognition using an user-guide scheme , 2015, 2015 IEEE 7th International Conference on Cybernetics and Intelligent Systems (CIS) and IEEE Conference on Robotics, Automation and Mechatronics (RAM).

[44]  Irene Cheng,et al.  Accidental Fall Detection Based on Skeleton Joint Correlation and Activity Boundary , 2015, ISVC.

[45]  Nicolas Thome,et al.  A Real-Time, Multiview Fall Detection System: A LHMM-Based Approach , 2008, IEEE Transactions on Circuits and Systems for Video Technology.

[46]  Alan L. Yuille,et al.  Mining 3D Key-Pose-Motifs for Action Recognition , 2016, 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).

[47]  Bogdan Kwolek,et al.  Fall detection using ceiling-mounted 3D depth camera , 2015, 2014 International Conference on Computer Vision Theory and Applications (VISAPP).

[48]  Irene Y. H. Gu,et al.  Human fall detection in videos via boosting and fusing statistical features of appearance, shape and motion dynamics on Riemannian manifolds with applications to assisted living , 2016, Comput. Vis. Image Underst..