N. Laurent-d-cohen and . Gadi, Vehicle X-ray scans registration: A one-dimensional optimization problem, International Conference on Scale Space and Variational Methods in Computer Vision, pp.578-589, 2017.

A. Marciano, L. D. Cohen, and N. Gadi, Vehicle X-ray images registration, Energy Minimization Methods in Computer Vision and Pattern Recognition: 11th International Conference, EMMCVPR2017, vol.10746, p.278, 2017.

A. Marciano, L. D. Cohen, and N. Gadi, Recalage d'images radiographiques de véhicules : un problème d'optimisation unidimensionelle, ORASIS 2017, 2017.

?. Visser, A. Schwaninger, D. Hardmeier, A. Flisch, M. Costin et al., Automated comparison of X-ray images for cargo scanning, IEEE International Carnahan Conference on Security Technology, pp.1-8, 2016.
URL : https://hal.archives-ouvertes.fr/cea-01811890

, Journal Articles

S. Kolokytha, A. Flisch, T. Lüthi, M. Plamondon, A. Schwaninger et al., Improving customs border control by creating a reference database of cargo inspection X-ray images, Advances in Science, vol.2, pp.60-66, 2017.

S. Kolokytha, A. Flisch, T. Lüthi, M. Plamondon, W. Visser et al., Creating a reference database of cargo inspection X-ray images using high energy radiographs of cargo mock-ups, Multimedia Tools and Applications, vol.77, pp.9379-9391, 2018.

, Patent Pending

A. Marciano, L. D. Cohen, and N. Gadi, Detection of Irregularities Using Registration, UK Application 1620098, 2016.

T. Albrecht, A. Dedner, M. Lüthi, and T. Vetter, Finite element surface registration incorporating curvature, volume preservation, and statistical model information, Computational and mathematical methods in medicine 2013, 2013.

A. Aldroubi, M. Eden, and M. Unser, Discrete Spline Filters for Multiresolutions and Wavelets of l_2, SIAM Journal on Mathematical Analysis, vol.25, pp.1412-1432, 1994.

V. Arsigny, O. Commowick, X. Pennec, and N. Ayache, A log-euclidean framework for statistics on diffeomorphisms, International Conference on Medical Image Computing and Computer-Assisted Intervention, pp.924-931, 2006.
URL : https://hal.archives-ouvertes.fr/inria-00615594

D. Arthur and S. Vassilvitskii, k-means++: The advantages of careful seeding, Proceedings of the eighteenth annual ACM-SIAM symposium on Discrete algorithms, pp.1027-1035, 2007.

J. Ashburner, A fast diffeomorphic image registration algorithm, Neuroimage, vol.38, pp.95-113, 2007.

A. Asthana, S. Zafeiriou, S. Cheng, and M. Pantic, Robust discriminative response map fitting with constrained local models, Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, pp.3444-3451, 2013.

G. Aubert and P. Kornprobst, Mathematical problems in image processing: partial differential equations and the calculus of variations, vol.147, 2006.

J. Aujol, Calculus of variations in image processing, Notes de cours de Master, 2008.

A. Babenko, A. Slesarev, A. Chigorin, and V. Lempitsky, Neural codes for image retrieval, European conference on computer vision, pp.584-599, 2014.

E. Bardinet, L. D. Cohen, and N. Ayache, A parametric deformable model to fit unstructured 3D data, Computer vision and image understanding, vol.71, pp.39-54, 1998.
URL : https://hal.archives-ouvertes.fr/inria-00615039

H. Bay, A. Ess, T. Tuytelaars, and L. Van-gool, Speeded-up robust features (SURF), Computer vision and image understanding, vol.110, pp.346-359, 2008.

M. F. Beg, M. I. Miller, A. Trouvé, and L. Younes, Computing large deformation metric mappings via geodesic flows of diffeomorphisms, International journal of computer vision, vol.61, pp.139-157, 2005.

S. Benayoun, Calcul local du mouvement: applications a l'imagerie medicale multidimensionnelle, 1994.

C. Bishop, Pattern Recognition and Machine Learning (Information Science and Statistics), 2007.

C. Broit, Optimal registration of deformed images, 1981.

C. J. Burges, A tutorial on support vector machines for pattern recognition, Data mining and knowledge discovery, vol.2, pp.121-167, 1998.

, CCP glossary of terms (UNODC, pp.2017-2029

K. Chatfield, K. Simonyan, A. Vedaldi, and A. Zisserman, Return of the devil in the details: Delving deep into convolutional nets, 2014.

G. E. Christensen and H. J. Johnson, Consistent image registration, IEEE transactions on medical imaging, vol.20, pp.568-582, 2001.

G. E. Christensen, R. D. Rabbitt, and M. I. Miller, Deformable templates using large deformation kinematics, IEEE transactions on image processing, vol.5, pp.1435-1447, 1996.
DOI : 10.1109/83.536892

G. E. Christensen, Deformable shape models for anatomy, 1994.

D. C. Ciresan, U. Meier, J. Masci, L. M. Gambardella, and J. Schmidhuber, Flexible, high performance convolutional neural networks for image classification, IJCAI Proceedings-International Joint Conference on Artificial Intelligence, vol.22, p.1237, 2011.

T. Cootes, M. Roberts, K. Babalola, and C. Taylor, Active shape and appearance models, Handbook of Biomedical Imaging, pp.105-122, 2015.
DOI : 10.1007/978-0-387-09749-7_6

T. Cootes, E. Baldock, and J. Graham, An introduction to active shape models, Image processing and analysis, pp.223-248, 2000.

T. F. Cootes, G. J. Edwards, and C. J. Taylor, Active appearance models, IEEE Transactions, vol.23, pp.681-685, 2001.
DOI : 10.1109/34.927467

URL : http://www.cs.cmu.edu/~efros/courses/AP06/Papers/cootes-pami-01.pdf

T. F. Cootes, C. J. Taylor, D. H. Cooper, and J. Graham, Active shape models-their training and application, Computer vision and image understanding, vol.61, pp.38-59, 1995.
DOI : 10.1006/cviu.1995.1004

T. F. Cootes and C. J. Taylor, Statistical models of appearance for computer vision, 2004.

K. Crammer and Y. Singer, On the algorithmic implementation of multiclass kernel-based vector machines, Journal of machine learning research, vol.2, pp.265-292, 2001.

D. Cristinacce and T. F. Cootes, Feature Detection and Tracking with Constrained Local Models, In: BMVC, vol.1, issue.2, p.3, 2006.
DOI : 10.5244/c.20.95

URL : http://www.bmva.org/bmvc/2006/papers/024.pdf

G. Csurka, C. Dance, L. Fan, J. Willamowski, and C. Bray, Visual categorization with bags of keypoints, Workshop on statistical learning in computer vision, ECCV, vol.1, pp.1-2, 2004.

N. Dalal and B. Triggs, Histograms of oriented gradients for human detection, Computer Vision and Pattern Recognition, vol.1, pp.886-893, 2005.
DOI : 10.1109/cvpr.2005.177

URL : https://hal.archives-ouvertes.fr/inria-00548512

, Bibliography

N. Dalal, B. Triggs, and C. Schmid, Human detection using oriented histograms of flow and appearance, European conference on computer vision, pp.428-441, 2006.
DOI : 10.1007/11744047_33

URL : https://hal.archives-ouvertes.fr/inria-00548587

, Did British police just find a surface-to-air missile in a local arms cache?-The Washington Post, pp.2018-2022

J. Donahue, Decaf: A deep convolutional activation feature for generic visual recognition, International conference on machine learning, pp.647-655, 2014.

B. Fischer and J. Modersitzki, A unified approach to fast image registration and a new curvature based registration technique, Linear Algebra and its applications, vol.380, pp.107-124, 2004.
DOI : 10.1016/j.laa.2003.10.021

URL : https://doi.org/10.1016/j.laa.2003.10.021

B. Fischer and J. Modersitzki, Fast diffusion registration, Contemporary Mathematics, vol.313, pp.117-128, 2002.
DOI : 10.1090/conm/313/05372

B. Fischer and J. Modersitzki, Fast image registration: a variational approach, Proceedings of the International Conference on Numerical Analysis & Computational Mathematics, G. Psihoyios, pp.69-74, 2003.

B. Fischer and J. Modersitzki, Ill-posed medicine-an introduction to image registration, Inverse Problems, vol.24, p.34008, 2008.
DOI : 10.1088/0266-5611/24/3/034008

K. Fukushima, Neocognitron: A hierarchical neural network capable of visual pattern recognition, Neural networks, vol.1, pp.119-130, 1988.

R. Girshick, J. Donahue, T. Darrell, and J. Malik, Rich feature hierarchies for accurate object detection and semantic segmentation, Proceedings of the IEEE conference on computer vision and pattern recognition, pp.580-587, 2014.

G. H. Golub and C. Reinsch, Singular value decomposition and least squares solutions, Numerische mathematik, vol.14, pp.403-420, 1970.

C. , Procrustes methods in the statistical analysis of shape, Journal of the Royal Statistical Society. Series B (Methodological, pp.285-339, 1991.

I. Goodfellow, Generative adversarial nets, Advances in neural information processing systems, pp.2672-2680, 2014.

E. Haber and J. Modersitzki, A multilevel method for image registration, SIAM Journal on Scientific Computing, vol.27, issue.5, pp.1594-1607, 2006.

E. Haber and J. Modersitzki, Image registration with guaranteed displacement regularity, International Journal of Computer Vision, vol.71, pp.361-372, 2007.

E. Haber and J. Modersitzki, Numerical methods for volume preserving image registration, Inverse problems, vol.20, p.1621, 2004.

M. Hachama, A. Desolneux, and F. Richard, Combining registration and abnormality detection in mammography, International Workshop on Biomedical Image Registration, pp.178-185, 2006.
URL : https://hal.archives-ouvertes.fr/hal-00259085

R. Hameeteman, J. F. Veenland, and W. J. Niessen, Volume preserving image registration via a post-processing stage, Medical Imaging, vol.6914, p.69140, 2008.

P. C. Hansen, Rank-deficient and discrete ill-posed problems: numerical aspects of linear inversion, vol.4, 2005.

B. Hariharan, P. Arbeláez, R. Girshick, and J. Malik, Hypercolumns for object segmentation and fine-grained localization, Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, pp.447-456, 2015.

C. Hsu, C. Chang, and C. Lin, A practical guide to support vector classification, 2003.

C. Hsu and C. Lin, A comparison of methods for multiclass support vector machines, IEEE transactions on Neural Networks, vol.13, pp.415-425, 2002.

D. H. Hubel and T. N. Wiesel, Receptive fields of single neurones in the cat's striate cortex, The Journal of physiology, vol.148, pp.574-591, 1959.

M. Hussain, D. Chen, A. Cheng, H. Wei, and D. Stanley, Change detection from remotely sensed images: From pixel-based to object-based approaches, ISPRS Journal of Photogrammetry and Remote Sensing, vol.80, pp.91-106, 2013.

N. Jaccard, T. W. Rogers, E. J. Morton, and L. D. Griffin, Tackling the X-ray cargo inspection challenge using machine learning, Anomaly Detection and Imaging with XRays (ADIX), vol.9847, p.98470, 2016.

A. K. Jain, Data clustering: 50 years beyond K-means, Pattern recognition letters, vol.31, pp.651-666, 2010.

S. Kolokytha, Improving customs' border control by creating a reference database of cargo inspection X-ray images, Advances in Science, vol.2, pp.60-66, 2017.

A. Krizhevsky, I. Sutskever, and G. E. Hinton, Imagenet classification with deep convolutional neural networks, Advances in neural information processing systems, pp.1097-1105, 2012.

L. Krückhans, D. I. Plümer, and . Schmittwilken, Ein Detektor für Ornamente auf Gebäudefassaden auf Basis des" histogram-of-orientedgradients, 2010.

Y. Lecun, Y. Bengio, and G. Hinton, Deep learning, Nature, vol.521, pp.436-444, 2015.

Y. Lecun, L. Bottou, Y. Bengio, and P. Haffner, Gradient-based learning applied to document recognition, Proceedings of the IEEE, vol.86, pp.2278-2324, 1998.

Y. Lecun, Handwritten digit recognition with a back-propagation network, Advances in neural information processing systems, pp.396-404, 1990.

M. Lefebure and L. D. Cohen, A multiresolution algorithm for signal and image registration, Proceedings., International Conference on, vol.3, pp.252-255, 1997.

T. Lindeberg, Scale-space theory: A basic tool for analyzing structures at different scales, Journal of applied statistics, vol.21, pp.225-270, 1994.

C. Lindner, P. A. Bromiley, M. C. Ionita, and T. F. Cootes, Robust and accurate shape model matching using random forest regression-voting, IEEE transactions on pattern analysis and machine intelligence, vol.37, pp.1862-1874, 2015.

C. Lindner, . Thiagarajah, T. Wilkinson, . Consortium, T. Wallis et al., Fully automatic segmentation of the proximal femur using random forest regression voting, IEEE transactions on medical imaging, vol.32, pp.1462-1472, 2013.

D. G. Lowe, Object recognition from local scale-invariant features, The proceedings of the seventh IEEE international conference on, vol.2, pp.1150-1157, 1999.

J. Macqueen, Some methods for classification and analysis of multivariate observations, Proceedings of the fifth Berkeley symposium on mathematical statistics and probability, vol.1, pp.281-297, 1967.

F. Maes, A. Collignon, D. Vandermeulen, G. Marchal, and P. Suetens, Multimodality image registration by maximization of mutual information, IEEE transactions on medical imaging, vol.16, pp.187-198, 1997.

A. Mang and G. Biros, An Inexact Newton-Krylov Algorithm for Constrained Diffeomorphic Image Registration, SIAM journal on imaging sciences, vol.8, issue.2, pp.1030-1069, 2015.

A. Mang and G. Biros, Constrained H?1-Regularization Schemes for Diffeomorphic Image Registration, SIAM Journal on Imaging Sciences, vol.9, issue.3, pp.1154-1194, 2016.

P. Martins, J. F. Henriques, R. Caseiro, and J. Batista, Bayesian constrained local models revisited, IEEE transactions on pattern analysis and machine intelligence, vol.38, pp.704-716, 2016.

G. Matheron and J. Serra, The birth of mathematical morphology, Proc. 6th Intl. Symp. Mathematical Morphology, pp.1-16, 2002.

D. Mery, Computer Vision for X-Ray Testing, 2015.

J. Modersitzki, FAIR: Flexible Algorithms for Image Registration, vol.6, 2009.

J. Modersitzki, Numerical methods for image registration, 2004.

, Multimodal image fusion software for MRI CT and PET, pp.2017-2026

J. Nocedal and S. Wright, Numerical optimization, 2006.

T. Ojala, M. Pietikainen, and T. Maenpaa, Multiresolution gray-scale and rotation invariant texture classification with local binary patterns, IEEE Transactions on pattern analysis and machine intelligence, vol.24, pp.971-987, 2002.

F. Pacifici, Very High Spatial Resolution Imagery for Urban Application, pp.2018-2022

, Pictured: Huge weapons haul seized by Spanish police-BBC News, pp.2018-2021

J. C. Platt, N. Cristianini, and J. Shawe-taylor, Large margin DAGs for multiclass classification, Advances in neural information processing systems, pp.547-553, 2000.

R. Prevost, Méthodes variationnelles pour la segmentation d'images à partir de modèles: applications en imagerie médicale, 2013.

S. J. Prince, Computer vision: models, learning, and inference, 2012.

R. J. Radke, S. Andra, O. Al-kofahi, and B. Roysam, Image change detection algorithms: a systematic survey, IEEE transactions on image processing, vol.14, pp.294-307, 2005.

W. Rawat and Z. Wang, Deep Convolutional Neural Networks for Image Classification: A Comprehensive Review, Neural Computation, 2017.

J. Redmon, S. Divvala, R. Girshick, and A. Farhadi, You only look once: Unified, realtime object detection, Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, pp.779-788, 2016.

J. Redmon and A. Farhadi, YOLO9000: Better, Faster, Stronger". In: arXiv preprint, 2016.

S. Ren, K. He, R. Girshick, and J. Sun, Faster R-CNN: Towards real-time object detection with region proposal networks, Advances in neural information processing systems, pp.91-99, 2015.

T. W. Rogers, N. Jaccard, E. J. Morton, and L. D. Griffin, Automated X-ray image analysis for cargo security: Critical review and future promise, Journal of X-ray science and technology, vol.25, pp.33-56, 2017.

T. Rohlfing, C. R. Maurer, D. A. Bluemke, and M. A. Jacobs, Volume-preserving nonrigid registration of MR breast images using free-form deformation with an incompressibility constraint, IEEE transactions on medical imaging, vol.22, pp.730-741, 2003.

E. Rosten, R. Porter, and T. Drummond, Faster and better: A machine learning approach to corner detection, IEEE transactions on pattern analysis and machine intelligence, vol.32, pp.105-119, 2010.

E. Rublee, V. Rabaud, K. Konolige, and G. Bradski, ORB: An efficient alternative to SIFT or SURF, Computer Vision (ICCV), pp.2564-2571, 2011.

D. Rueckert, Non-rigid registration using free-form deformations, Handbook of Biomedical Imaging, pp.277-294, 2015.

D. Rueckert, L. I. Sonoda, C. Hayes, D. L. Hill, M. O. Leach et al., Nonrigid registration using free-form deformations: application to breast MR images, IEEE transactions on medical imaging, vol.18, pp.712-721, 1999.

J. Rühaak, L. König, F. Tramnitzke, H. Köstler, and J. Modersitzki, A matrix-free approach to efficient affine-linear image registration on CPU and GPU, In: Journal of Real-Time Image Processing, vol.13, pp.205-225, 2017.

T. Salimans, I. Goodfellow, W. Zaremba, V. Cheung, A. Radford et al., Improved techniques for training gans, Advances in Neural Information Processing Systems, pp.2234-2242, 2016.

M. Y. Sallam and K. W. Bowyer, Registration and difference analysis of corresponding mammogram images, Medical image analysis, vol.3, pp.103-118, 1999.

B. Schölkopf and A. J. Smola, Learning with kernels: support vector machines, regularization, optimization, and beyond, 2002.

N. Shapovalova, C. Fernández, F. X. Roca, and J. Gonzàlez, Semantics of human behavior in image sequences, Computer Analysis of Human Behavior, pp.151-182, 2011.

A. Sharif-razavian, H. Azizpour, J. Sullivan, and S. Carlsson, CNN features off-theshelf: an astounding baseline for recognition, Proceedings of the IEEE conference on computer vision and pattern recognition workshops, pp.806-813, 2014.

A. Sotiras, C. Davatzikos, and N. Paragios, Deformable medical image registration: A survey, IEEE transactions on medical imaging, vol.32, pp.1153-1190, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00684715

S. Srinivas, R. K. Sarvadevabhatla, K. R. Mopuri, N. Prabhu, S. S. Kruthiventi et al., A taxonomy of deep convolutional neural nets for computer vision, 2016.

L. H. Staib and J. S. Duncan, Boundary finding with parametrically deformable models, IEEE transactions on pattern analysis and machine intelligence, vol.14, pp.1061-1075, 1992.

M. B. Stegmann, Active appearance models: Theory, extensions and cases, Informatics and Mathematical Modelling, p.262, 2000.

I. Steinwart and A. Christmann, Support vector machines, 2008.

C. Studholme, D. L. Hill, and D. J. Hawkes, An overlap invariant entropy measure of 3D medical image alignment, Pattern recognition, vol.32, pp.71-86, 1999.

F. Suard, A. Rakotomamonjy, A. Bensrhair, and A. Broggi, Pedestrian detection using infrared images and histograms of oriented gradients, Intelligent Vehicles Symposium, pp.206-212, 2006.

A. Sundaresan, P. K. Varshney, and M. K. Arora, Robustness of change detection algorithms in the presence of registration errors, Photogrammetric Engineering & Remote Sensing, vol.73, pp.375-383, 2007.

R. Szeliski, Computer vision: algorithms and applications, 2010.

B. Tang, G. Sapiro, and V. Caselles, Direction diffusion, The Proceedings of the Seventh IEEE International Conference on, vol.2, pp.1245-1252, 1999.

, Terrorisme: les douaniers alertent sur la «destruction» de leurs effectifs, pp.2018-2021

D. Terzopoulos, A. Witkin, and M. Kass, Constraints on deformable models: Recovering 3D shape and nonrigid motion, Artificial intelligence, vol.36, pp.91-123, 1988.

P. Thévenaz, T. Blu, and M. Unser, Image interpolation and resampling, Handbook of medical imaging, processing and analysis, vol.1, pp.393-420, 2000.

J. Thirion, Image matching as a diffusion process: an analogy with Maxwell's demons, Medical image analysis, vol.2, pp.243-260, 1998.

P. H. Torr and A. Zisserman, MLESAC: A new robust estimator with application to estimating image geometry, Computer Vision and Image Understanding, vol.78, pp.138-156, 2000.

D. Tschumperle and R. Deriche, Vector-valued image regularization with PDEs: A common framework for different applications, IEEE transactions on pattern analysis and machine intelligence, vol.27, pp.506-517, 2005.

M. Vakalopoulou, K. Karantzalos, N. Komodakis, and N. Paragios, Simultaneous registration and change detection in multitemporal, very high resolution remote sensing data, Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition Workshops, pp.61-69, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01264072

B. Van-ginneken, A. F. Frangi, J. J. Staal, B. M. Ter-haar-romeny, and M. A. Viergever, Active shape model segmentation with optimal features, IEEE transactions on medical imaging, vol.21, pp.924-933, 2002.

V. N. Vapnik and S. Kotz, Estimation of dependences based on empirical data, vol.40, 1982.

V. N. Vapnik and V. Vapnik, Statistical learning theory, vol.1, 1998.

T. Vercauteren, X. Pennec, A. Perchant, and N. Ayache, Diffeomorphic demons: Efficient non-parametric image registration, NeuroImage, vol.45, pp.61-72, 2009.
URL : https://hal.archives-ouvertes.fr/inserm-00349600

M. A. Viergever, J. A. Maintz, S. Klein, K. Murphy, M. Staring et al., A survey of medical image registration-under review, Medical image analysis, vol.33, pp.140-144, 2016.

P. Viola, W. M. Wells, and I. , Alignment by maximization of mutual information, International journal of computer vision, vol.24, pp.137-154, 1997.

C. R. Vogel, Computational methods for inverse problems, 2002.

C. Vondrick, A. Khosla, T. Malisiewicz, and A. Torralba, Hoggles: Visualizing object detection features, Computer Vision (ICCV), pp.1-8, 2013.

Z. Wang and X. Xue, Multi-class support vector machine, Support Vector Machines Applications, pp.23-48, 2014.

S. Wold, K. Esbensen, and P. Geladi, Principal component analysis, Chemometrics and intelligent laboratory systems, vol.2, pp.37-52, 1987.

J. Yosinski, J. Clune, Y. Bengio, and H. Lipson, How transferable are features in deep neural networks?" In: Advances in neural information processing systems, pp.3320-3328, 2014.

L. Younes, Invariance, déformations et reconnaissance de formes, vol.44, 2003.

A. L. Yuille, P. W. Hallinan, and D. S. Cohen, Feature extraction from faces using deformable templates, International journal of computer vision, vol.8, pp.99-111, 1992.

M. D. Zeiler and R. Fergus, Visualizing and understanding convolutional networks, European conference on computer vision, pp.818-833, 2014.

J. Zhang, M. Marsza?ek, S. Lazebnik, and C. Schmid, Local features and kernels for classification of texture and object categories: A comprehensive study, International journal of computer vision, vol.73, pp.213-238, 2007.
URL : https://hal.archives-ouvertes.fr/inria-00548574

Q. Zhu, M. Yeh, K. Cheng, and S. Avidan, Fast human detection using a cascade of histograms of oriented gradients, Computer Vision and Pattern Recognition, vol.2, pp.1491-1498, 2006.