A. Mccarthy, Kilometer-range, high resolution depth imaging via 1560 nm wavelength single-photon detection, Opt. Express, vol.21, issue.7, pp.8904-8915, 2013.

J. Hecht, Lidar for self-driving cars, Opt. Photon. News, vol.29, issue.1, pp.26-33, 2018.

M. A. Canuto, Ancient lowland Maya complexity as revealed by airborne laser scanning of northern Guatemala, Science, vol.361, issue.6409, pp.1-17, 2018.
URL : https://hal.archives-ouvertes.fr/hal-02132661

C. Mallet and F. Bretar, Full-waveform topographic Lidar: State-of-theart, ISPRS J. Photogrammetry Remote Sens, vol.64, issue.1, pp.1-16, 2009.

E. S. Douglas, Finding leaves in the forest: The dual-wavelength echidna Lidar, IEEE Geosci. Remote Sens. Lett, vol.12, issue.4, pp.776-780, 2015.

A. M. Wallace, Design and evaluation of multispectral LiDAR for the recovery of arboreal parameters, IEEE Trans. Geosci. Remote Sens, vol.52, issue.8, pp.4942-4954, 2014.

Y. Altmann, A. Wallace, and S. Mclaughlin, Spectral unmixing of multispectral Lidar signals, IEEE Trans. Signal Process, vol.63, issue.20, pp.5525-5534, 2015.

G. Wei, S. Shalei, Z. Bo, S. Shuo, L. Faquan et al., Multiwavelength canopy Lidar for remote sensing of vegetation: Design and system performance, ISPRS J. Photogrammetry Remote Sens, vol.69, pp.1-9, 2012.

X. Ren, Y. Altmann, R. Tobin, A. Mccarthy, S. Mclaughlin et al., Wavelength-time coding for multispectral 3D imaging using single-photon LiDAR, Opt. Express, vol.26, issue.23, pp.30-146, 2018.

A. Kirmani, First-photon imaging, Science, vol.343, issue.6166, pp.58-61, 2014.

J. Rapp and V. K. Goyal, A few photons among many: Unmixing signal and noise for photon-efficient active imaging, IEEE Trans. Comput. Imag, vol.3, issue.3, pp.445-459, 2017.

D. B. Lindell, M. Otoole, and G. Wetzstein, Single-photon 3D imaging with deep sensor fusion, ACM Trans. Graph, vol.37, issue.4, 2018.

D. Shin, F. Xu, F. N. Wong, J. H. Shapiro, and V. K. Goyal, Computational multi-depth single-photon imaging, Opt. Express, vol.24, issue.3, pp.1873-1888, 2016.

A. Halimi, Restoration of intensity and depth images constructed using sparse single-photon data, Proc. Eur. Signal Process. Conf, pp.86-90, 2016.

J. Tachella, Bayesian 3D reconstruction of complex scenes from single-photon Lidar data, SIAM J. Imag. Sci, vol.12, issue.1, pp.521-550, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02185077

Y. Altmann, Bayesian restoration of reflectivity and range profiles from subsampled single-photon multispectral lidar data, Proc. Eur. Signal Process. Conf., Kos Island, pp.1410-1414, 2017.

Y. Altmann, Robust spectral unmixing of sparse multispectral lidar waveforms using gamma Markov random fields, IEEE Trans. Comput. Imag, vol.3, issue.4, pp.658-670, 2017.

X. Ren, High-resolution depth profiling using a range-gated CMOS SPAD quanta image sensor, Opt. Express, vol.26, issue.5, pp.5541-5557, 2018.

H. Arguello and G. R. Arce, Colored coded aperture design by concentration of measure in compressive spectral imaging, IEEE Trans. Image Process, vol.23, issue.4, pp.1896-1908, 2014.

C. V. Correa, H. Arguello, and G. R. Arce, Spatiotemporal blue noise coded aperture design for multi-shot compressive spectral imaging, JOSA A, vol.33, issue.12, pp.2312-2322, 2016.

D. Shin, Photon-efficient imaging with a single-photon camera, Nature Commun, vol.7, 2016.

A. Halimi, R. Tobin, A. Mccarthy, J. M. Bioucas-dias, S. Mclaughlin et al., Robust restoration of sparse multidimensional singlephoton lidar images, IEEE Trans. Comput. Imag

C. Robert, The Bayesian Choice: From Decision-Theoretic Foundations to Computational Implementation, 2007.

S. Brooks, A. Gelman, G. Jones, and X. Meng, Handbook of Markov Chain Monte Carlo, 2011.

A. J. Baddeley and M. Van-lieshout, Area-interaction point processes, Ann. Inst. Statistical Math, vol.47, issue.4, pp.601-619, 1995.

H. Rue and L. Held, Gaussian Markov Random Fields: Theory and Applications, 2005.

H. Rue, S. Martino, and N. Chopin, Approximate Bayesian inference for latent Gaussian models by using integrated nested Laplace approximations, J. Roy. Statistical Soc., Series B (Statistical Methodol.), vol.71, issue.2, pp.319-392, 2009.
URL : https://hal.archives-ouvertes.fr/hal-02403320

J. Salmon, Z. Harmany, C. Deledalle, and R. Willett, Poisson noise reduction with non-local PCA, J. Math. Imag. Vis, vol.48, issue.2, pp.279-294, 2014.
URL : https://hal.archives-ouvertes.fr/hal-00957837

R. Hartley and A. Zisserman, Multiple View Geometry in Computer Vision, 2003.

D. Shin, A. Kirmani, V. K. Goyal, and J. H. Shapiro, Photon-efficient computational 3D and reflectivity imaging with single-photon detectors, IEEE Trans. Comput. Imag, vol.1, issue.2, pp.112-125, 2015.

O. Dikmen and A. T. Cemgil, Gamma Markov random fields for audio source modeling, IEEE Trans. Audio, Speech, Lang. Process, vol.18, issue.3, pp.589-601, 2010.

J. Tachella, Y. Altmann, M. Pereyra, S. Mclaughlin, and J. Tourneret, Bayesian restoration of high-dimensional photon-starved images, Proc. Eur. Signal Process. Conf, pp.747-751, 2018.

M. J. Beal, Variational algorithms for approximate Bayesian inference, Gatsby Computational Neuroscience Unit, 2003.

T. P. Minka, Expectation propagation for approximate Bayesian inference, Proc. Conf. Uncertainty Artif. Intell, pp.362-369, 2001.

M. Zhou, L. Hannah, D. B. Dunson, and L. Carin, Beta-negative binomial process and Poisson factor analysis, Proc. 15th Int. Conf, vol.22, pp.1462-1471, 2012.

M. Raginsky, R. M. Willett, Z. T. Harmany, and R. F. Marcia, Compressed sensing performance bounds under poisson noise, IEEE Trans. Signal Process, vol.58, issue.8, pp.3990-4002, 2010.

M. Raginsky, S. Jafarpour, Z. T. Harmany, R. F. Marcia, R. M. Willett et al., Performance bounds for expander-based compressed sensing in Poisson noise, IEEE Trans. Signal Process, vol.59, issue.9, pp.4139-4153, 2011.

Y. Li and G. Raskutti, Minimax optimal convex methods for Poisson inverse problems under q -ball sparsity, IEEE Trans. Inf. Theory, vol.64, issue.8, pp.5498-5512, 2018.

O. Deussen, S. Hiller, C. Van-overveld, and T. Strothotte, Floating points: A method for computing stipple drawings, Proc, vol.19, pp.41-50, 2000.

L. Galvis, E. Mojica, H. Arguello, and G. R. Arce, Shifting colored coded aperture design for spectral imaging, Appl. Opt, vol.58, issue.7, pp.28-38, 2019.

L. Galvis, D. Lau, X. Ma, H. Arguello, and G. R. Arce, Coded aperture design in compressive spectral imaging based on side information, Appl. Opt, vol.56, issue.22, pp.6332-6340, 2017.

K. M. León-lópez, L. V. Carreño, and H. A. Fuentes, Temporal colored coded aperture design in compressive spectral video sensing, IEEE Trans. Image Process, vol.28, issue.1, pp.253-264, 2019.

E. Mojica, S. Pertuz, and H. Arguello, High-resolution coded-aperture design for compressive x-ray tomography using low resolution detectors, Opt. Commun, vol.404, pp.103-109, 2017.

K. Choi and D. J. Brady, Coded aperture computed tomography, Proc. SPIE, vol.7468, 2009.

C. Hinojosa, J. Bacca, and H. Arguello, Coded aperture design for compressive spectral subspace clustering, IEEE J. Sel. Topics Signal Process, vol.12, issue.6, pp.1589-1600, 2018.

V. Surazhsky, P. Alliez, and C. Gotsman, Isotropic remeshing of surfaces: A local parameterization approach, INRIA, 2003.
URL : https://hal.archives-ouvertes.fr/inria-00071612

O. Deussen, P. Hanrahan, B. Lintermann, R. M?ch, M. Pharr et al., Realistic modeling and rendering of plant ecosystems, Proc. 25th Annu. Conf. Comput. Graph. Interactive Techn, pp.275-286, 1998.

G. Liang, L. Lu, Z. Chen, and C. Yang, Poisson disk sampling through disk packing, Comput. Vis. Media, vol.1, issue.1, pp.17-26, 2015.

D. L. Lau, R. Ulichney, and G. R. Arce, Blue and green noise halftoning models, IEEE Signal Process. Mag, vol.20, issue.4, pp.28-38, 2003.

D. Scharstein and C. , Learning conditional random fields for stereo, Proc. Int. Conf. Comput. Vis. Pattern Recognit, pp.1-8, 2007.

A. Chambolle and T. Pock, An introduction to continuous optimization for imaging, Acta Numerica, vol.25, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01346507

C. Gilavert, S. Moussaoui, and J. Idier, Efficient Gaussian sampling for solving large-scale inverse problems using MCMC, IEEE Trans. Signal Process, vol.63, issue.1, pp.70-80, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01059414