O. Elharrouss, D. Moujahid, and H. Tairi, Motion detection based on the combining of the background subtraction and the structure-texture decomposition, Optik-International Journal for Light and Electron Optics, vol.126, issue.24, pp.5992-5997, 2015.

S. S. Sengar and S. Mukhopadhyay, Detection of moving objects based on enhancement of optical flow, Optik-International Journal for Light and Electron Optics, vol.145, pp.130-141, 2017.

M. Fei, J. Li, and H. Liu, Visual tracking based on improved foreground detection and perceptual hashing, Neurocomputing, vol.152, pp.413-428, 2015.

S. S. Sengar and S. Mukhopadhyay, A novel method for moving object detection based on block based frame differencing, 3rd International Conference on Recent Advances in Information Technology, pp.462-472, 2016.

S. S. Sengar and S. Mukhopadhyay, Motion detection using block based bi-directional optical flow method, Journal of Visual Communication and Image Representation, vol.49, pp.89-103, 2017.

P. K. Sahoo, P. Kanungo, and S. Mishra, A fast valley-based segmentation for detection of slowly moving objects. Signal, Image and Video Processing, pp.1-8, 2018.

T. Bouwmans, A. Sobral, S. Javed, S. K. Jung, and E. H. Zahzah, Decomposition into lowrank plus additive matrices for background/foreground separation: A review for a comparative evaluation with a large-scale dataset, Computer Science Review, p.page, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01522823

S. S. Sengar and S. Mukhopadhyay, Moving object tracking using laplacian-dct based perceptual hash, International Conference on Wireless Communications, Signal Processing and Networking, pp.2345-2349, 2016.

B. Sandberg, T. Chan, and L. Vese, A level-set and gabor-based active contour algorithm for segmenting textured images, UCLA Department of Mathematics CAM report, 2002.

S. Ono, T. Miyata, and I. Yamada, Cartoon-texture image decomposition using blockwise low-rank texture characterization, IEEE Transactions on Image Processing, vol.23, issue.3, pp.1128-1142, 2014.

J. Jeon, S. Cho, X. Tong, and S. Lee, Intrinsic image decomposition using structure-texture separation and surface normals, European Conference on Computer Vision, pp.218-233, 2014.

W. M. Wells, W. E. Grimson, R. Kikinis, and F. A. Jolesz, Adaptive segmentation of mri data, IEEE transactions on medical imaging, vol.15, issue.4, pp.429-442, 1996.

F. Malgouyres, Mathematical analysis of a model which combines total variation and wavelet for image restoration, Journal of information processes, vol.2, issue.1, pp.1-10, 2002.

F. Malgouyres, Combining total variation and wavelet packet approaches for image deblurring, Variational and Level Set Methods in Computer Vision, pp.57-64, 2001.

E. J. Candès and F. Guo, New multiscale transforms, minimum total variation synthesis: Applications to edge-preserving image reconstruction, Signal Processing, vol.82, issue.11, pp.1519-1543, 2002.

S. Casadei, S. Mitter, and P. Perona, Boundary detection in piecewise homogeneous textured images, European Conference on Computer Vision, pp.174-183, 1992.

S. C. Zhu, Y. Wu, and D. Mumford, Filters, random fields and maximum entropy (frame): Towards a unified theory for texture modeling, International Journal of Computer Vision, vol.27, issue.2, pp.107-126, 1998.

A. Halidou, X. You, M. Hamidine, R. A. Etoundi, and L. H. Diakite, Fast pedestrian detection based on region of interest and multi-block local binary pattern descriptors, Computers & Electrical Engineering, vol.40, issue.8, pp.375-389, 2014.

G. L. Foresti, C. Micheloni, and C. Piciarelli, Detecting moving people in video streams, Pattern Recognition Letters, vol.26, issue.14, pp.2232-2243, 2005.

A. F. Caballero, J. C. Castillo, J. M. Cantos, and R. M. Tomas, Optical flow or image subtraction in human detection from infrared camera on mobile robot, Journal of Robotics and Autonomous Systems, vol.58, pp.1273-1281, 2010.

J. Y. Bouguet, Pyramidal implementation of the affine Lucas kanade feature tracker description of the algorithm, Intel Corporation, vol.5, pp.1-10, 2001.

C. Stauffer and W. Grimson, Adaptive background mixture models for real-time tracking, International Conference On Computer Vision and Pattern Recognition, 1999.

S. S. Sengar and S. Mukhopadhyay, Moving object detection based on frame difference and w4. Signal, Image and Video Processing, vol.11, pp.1357-1364, 2017.

L. Maddalena and A. Petrosino, The SOBS algorithm: what are the limits?, Workshop on Computer Vision and Pattern Recognition, pp.21-26, 2012.

N. M. Oliver, B. Rosario, and A. P. Pentland, Bayesian computer vision system for modeling human interactions, IEEE Transactions on Pattern Analysis and Machine Intelligence, vol.22, pp.831-843, 2000.

S. S. Sengar and S. Mukhopadhyay, Foreground detection via background subtraction and improved three-frame differencing, Arabian Journal for Science and Engineering, vol.42, issue.8, pp.3621-3633, 2017.

E. Chen, X. Xu, X. Yang, and W. Zhang, Quaternion based optical flow estimation for robust object tracking, Journal of Digital Signal Processing, vol.23, pp.118-125, 2013.

L. A. Schwarz, A. Mkhitaryan, D. Mateus, and N. Navab, Human skeleton tracking from depth data using geodesic distances and optical flow, Journal of Image and Vision Computing, vol.30, pp.217-226, 2012.
URL : https://hal.archives-ouvertes.fr/hal-01692292

S. S. Sengar and S. Mukhopadhyay, Moving object area detection using normalized self adaptive optical flow, Optik-International Journal for Light and Electron Optics, vol.127, issue.16, pp.6258-6267, 2016.

D. Liu and J. Yu, Otsu method and k-means, 9th International Conference on Hybrid Intelligent Systems, pp.344-349, 2009.

P. Liao, T. Chen, and P. Chung, A fast algorithm for level thresholding, Journal of Information Science and Engineering, vol.17, pp.713-727, 2001.

A. V. Luminita and J. O. Stanley, Modeling textures with total variation minimization and oscillating patterns in image processing, Journal of Scientific Computing, vol.19, issue.1-3, pp.553-572, 2003.

A. N. Sukumaran, R. Sankararajan, and M. Swaminathan, Compressed sensing based foreground detection vector for object detection in wireless visual sensor networks, AEU-International Journal of Electronics and Communications, vol.72, pp.216-224, 2017.

J. Yin, L. Liu, H. Li, and Q. Liu, The infrared moving object detection and security detection related algorithms based on w4 and frame difference, Infrared Physics & Technology, vol.77, pp.302-315, 2016.

E. R. Dougherty and R. A. Lotufo, Hands-on morphological image processing, vol.71, 2003.

, Collected by the HDTV group, Database: Images & video clips, 2006.

, Action Recognition