ARTICLE
Received 26 May 2010 | Accepted 24 Aug 2010 | Published 21 Sep 2010 DOI: 10.1038/ncomms1078
Optical imaging relies on the ability to illuminate an object, collect and analyse the light it scatters or transmits. Propagation through complex media such as biological tissues was so far believed to degrade the attainable depth, as well as the resolution for imaging, because of multiple scattering. This is why such media are usually considered opaque. Recently, we demonstrated that it is possible to measure the complex mesoscopic optical transmission channels that allow light to traverse through such an opaque medium. Here, we show that we can optimally exploit those channels to coherently transmit and recover an arbitrary image with a high delity, independently of the complexity of the propagation.
Image transmission through an opaque material
Sbastien Popoff1, Geoffroy Lerosey1, Mathias Fink1, Albert Claude Boccara1 & Sylvain Gigan1
1 Institut Langevin, ESPCI ParisTech, CNRS UMR 7587, Universits Paris 6 & 7, INSERM, ESPCI, 10 rue Vauquelin, Paris, 75005, France. Correspondence and requests for materials should be addressed to S.G. (email: [email protected]).
NATURE COMMUNICATIONS | 1:81 | DOI: 10.1038/ncomms1078 | www.nature.com/naturecommunications
2010 Macmillan Publishers Limited. All rights reserved.
ARTICLE
NATURE COMMUNICATIONS | DOI: 10.1038/ncomms1078
In a classical optical system, the propagation of a complex eld from one plane to another is well understood, be it by Fresnel or Fraunhofer diraction theory, or by ray tracing for more
complex cases1. However, all these approaches break down when multiple scattering occurs2. A medium in which light is scattered many times mixes all input wavevectors in a seemingly random way, and is usually considered opaque. Until recently, scattering has always been considered as noise3, and most imaging techniques in turbid media rely on ballistic photons only4,5, which prevents the study of thick scattering samples. Following works in acoustics6,
recent experiments have demonstrated that multiply scattered light can nonetheless be harnessed, thanks to wavefront control79, and
even put to prot to surpass what one can achieve within a homogenous medium in terms of focusing10.
In our experiment (see Fig. 1), we illuminate an object with a laser (displayed through a spatial light modulator (SLM)), and recover its image on a chargecoupled device (CCD) camera, aer propagation through a thick opaque sample. As expected, we measure on the camera a speckle that bears no resemblance to the original image. This speckle is the result of multiple scattering and interferences in the sample.
Although it can be described on average by the diusion equation or Monte Carlo simulation11, the propagation through a real linear multiple scattering medium is too complex to be described by classical means. Nonetheless, multiple scattering is deterministic and information is not lost. In other terms, the measured pattern on the CCD is the result of the transmission of light through a large number of very complicated optical channels, each of them with a given complex transmission. Here, we study the inverse problem of the reconstruction of an arbitrary image, and show that it is possible to recover it through the opaque medium. A prerequisite is, however, to measure the socalled transmission matrix (TM) of our optical system.
We dene the mesoscopic TM of an optical system for a given wavelength as the matrix K of the complex coefficients kmn connecting the optical eld (in amplitude and phase) in the mth of M outputfree mode to the one in the nth of N inputfree mode. Thus, the projection Emout of the outgoing optical eld on the mth free mode is given by E k E
m n mn n
= , where Sref is a diagonal matrix due to a static reference speckle. The input and output modes are the SLM and the CCD pixels, respectively. The measured matrix Kobs is sufficient to recover an input image. This
TM measurement takes a few minutes, and the system is stationary well over this time. Once the matrix is measured, we generate an amplitude object Eobj by subtracting twophase objects (see Methods for details). A realization takes a few hundred milliseconds, limited only by the speed of the SLM.
Here, our aim is to use the TM to reconstruct an arbitrary image through the scattering sample: we need to estimate the initial input Eobj from the output amplitude speckle Eout. This problem consists in using an appropriate combination of the medium channels and, therefore, using a weighting of singular modes/singular values of the TM matched to the noise and to the transmitted image. Noises of dierent origins (laser uctuations, CCD readout noise and residual amplitude modulation) degrade the delity of the TM measurement. It is the exact analogue of multipleinput multipleoutput information transmission in complex environment that has been studied in the past few years in wireless communications17. This inverse problem also bears some similarities to optical tomography18,19, although in a coherent regime20. We show that this allows us to reconstruct the image of an arbitrarily complex object, as viewed through an opaque medium.
ResultsReconstruction operators. There are two straightforward options.
(i) Without noise, a perfect image transmission can be performed by the use of the inverse matrix (or pseudoinverse matrix for any input/output pixels ratio), as K K I
obs obs
out in
= where Enin is the complex amplitude of the optical eld in the nth incoming free mode. In essence, the TM gives the relationship between input and output pixels, notwithstanding
the complexity of the propagation, as long as the medium is stable. A singular value decomposition of the TM gives the input and output eigenmodes of the system, and singular values are the amplitude transmission of these modes.
Inspired by various works in acoustics12,13 and electromagnetism14, we demonstrated in Popo et al.15 that it is possible to measure the TM of a linear optical system that comprises a multiple scattering medium. In a nutshell, we send several dierent wavefronts with the SLM, record the results on the CCD and deduce the TM using phaseshiing interferometry. The singular value distribution of a TM of a homogeneous zone of the opaque sample follows the quartercircle law (that is, there is no peculiar input/output correlation16), which indicates that light propagation is in the multiple scattering regime with virtually no ballistic photons le.
Using this technique, we have access to K K S
obs ref
=
1 , where I is the identity matrix. Unfortunately, this operator is very unstable in the presence of noise. Singular values of Kobs1 are the inverse ones of Kobs; thus, singular values of Kobs below noise level result in strong and aberrant contributions. The reconstructed image can hence be unrelated with the input. (ii) In a general case, another possible operator for image transmission is the time reversal operator. This operator is known to be stable regarding noise level, as it takes advantage of the strong singular values to maximize energy transmission12.
Its monochromatic counterpart is phase conjugation (classically used to compensate dispersion in optics21) and is performed using
Kobs . K K
obs obs
Reference part
CCD
Reconstruction
40
NA : 0.75
P
Controlled part
20
NA : 0.5
Sample
P
D
Laser 532 nm
SLM
has a strong diagonal, but the rest of it is not null, which implies that the delity of the reconstruction rapidly decreases with the complexity of the image to transmit22. A more general approach is to use a mean square optimized operator (MSO), which we note W. This operator minimizes transmission errors17,23,
estimated by the expected value E WE E WE E
{[ ][ ] }
L
L
P
Figure 1 | Experimental setup. A 532 nm laser is expanded and reected off a spatial light modulator (SLM). The laser beam is phase-modulated, focused on the multiple scattering sample and the output intensity speckle pattern is imaged by a CCD camera. L, lens; P, polarizer; D, diaphragm. The object to image is synthetized directly by the SLM, and reconstructed from the complex output speckle, thanks to the transmission matrix.
out in out in
.
For an experimental noise of standard deviation on the output pixels, W reads as follows:
W K K I K
= +
1
obs obs obs
s
(1)
NATURE COMMUNICATIONS | 1:81 | DOI: 10.1038/ncomms1078 | www.nature.com/naturecommunications
2010 Macmillan Publishers Limited. All rights reserved.
NATURE COMMUNICATIONS | DOI: 10.1038/ncomms1078
ARTICLE
a
Virtual object
h
1.0
0.1
Optimal MSO
120
c
fOne realization
94.5%
Correlation coefficient
0.9
0.7
0.5
0.3
One realization
b
0.8
0.6
0.4
0.2
100
80
60
40
20
0
Phase conjugation
Phase conjugation
Singular values count
Output speckle
21.4%
34.6%
d
40 Averages
g 40 Averages
MSO
e 40 Averages
Inversion
10
103
102
101
100
101
102
75.7%
Normalized singular values scale for
~
10.7%
Inversion
Figure 2 | Comparisons of the reconstruction methods. (a) Initial greyscale object and (b) a typical output speckle gure after the opaque medium. (c, f) Experimental images obtained with one realization using, respectively, phase conjugation and MSO operator; (d, e, g) experimental images averaging over 40 virtual realizations using, respectively, inverse matrix, phase conjugation and MSO operator. Values in insets are the correlation with the object a. (h) Correlation coefcient between Eimg and Eobj as a function of s (line) and singular value distribution of Kobs (bars). Results are obtained averaging over 100 virtual realizations of disorder, and both s and singular values share the same scale on the abscissa axis.
Without noise, W reduces to the inverse matrix Kobs1, which is optimal in this conguration, whereas for a very high noise level, it becomes proportional to the transpose conjugate matrix Kobs, the phase conjugation operator. It is important to note that has the same dimension as K K
obs obs
and thus has to be compared with the square of the singular values of Kobs. Because of this experimental noise, the reconstruction is imperfect. We estimate the reconstruction delity by computing the correlation between the image and the object.
Improving the reconstruction. A general principle is that the reconstruction noise can be lowered by increasing the number of degrees of freedom (NDOF) that we measure and control. For a given object corresponding to N input pixels, we investigated two possibilities: averaging over disorder realizations and increasing the number of output modes M.
A possible way to average over disorder is to illuminate the object with dierent wavefronts. It is formally equivalent to transmitting the same image through dierent channels, as if the image is propagated through dierent realizations of disorder. To that end, we use dierent combinations of random phase masks to generate the same virtual object (see Methods). We use this technique to virtually increase NDOF , and we average the results to lower the reconstruction noise. It is the mochromatic equivalent of using broadband signals, which takes advantage of temporal degrees of freedom24. We
show in Figure 2 the results for the image transmission of a greyscale 32 by 32 pixels pattern, and detected on a 32 by 32 pixels region on the CCD. We tested MSO at dierent noise levels for one realization and for averaging over 40 virtual realizations using random phase masks. To nd the optimal MSO operator, we numerically compute the optimal that maximizes the image reconstruction, hence obtaining an estimation of the experimental noise level. A simple inverse ltering does not allow image reconstruction, even with averaging, whereas phase conjugation converges toward 75% correlated image. In contrast, optimal MSO allowed a 94% correlation for 40 averaging (and a modest 34% correlation in one realization). In addition, optimal MSO is very robust to the presence of ballistic contributions that strongly hinder reconstruction in phase conjugation (see Discussion).
The second approach to add degrees of freedom is to increase the number M of independent pixels recorded on the CCD. In contrast with focusing experiments in which the quality of the output image
depends on the number of input modes N8, the quality of image reconstruction depends on the number of output modes M. An important advantage is that the limiting time in our experiment is the number or steps required to measure the TM, equal to 4N. Thus, we can easily increase M by increasing the size of the image recorded without increasing the measurement time. More than just modifying the NDOF , the ratio = M/N 1 is expected to change the statistics of the TM. Random matrix theory predicts that for these matrices, the smallest normalized singular value reads l g
g0 1 1
=
( / )16,25.
If we increase , so does the minimum singular value lg0 . In a simple physical picture, recording more information at the output results in picking between all available channels those that convey more energy through the medium. If the energy transported by the most inefficient channel reaches and exceeds the noise level, the TM recording is barely sensitive to the experimental noise. We expect that for an appropriate ratio , lg0 reaches the experimental noise level. At this point, no singular values can be drowned in the noise and the pseudoinverse operator can be efficiently used.
We experimentally recorded the TM for dierent values of 1 and tested optimal MSO and pseudoinversion. The results are shown in Figure 3. Adding degrees of freedom strongly improves the quality of the reconstruction. We see that the quality of the reconstructed image increases with and reaches a > 85% delity for the largest value of = 11, without any averaging. The minimum singular value lg0 also increases with . As expected, for lg0 opt,
pseudoinversion is equivalent to optimal MSO. One might notice
that experimental lg0 are always smaller than their theoretical predictions. This deviation can be explained by the amplitude of the reference pattern | |
Sref that induces correlations in the matrix. It is well known in random matrix theory that correlations modify the singular value decomposition of a matrix of identically distributed elements16.
Discussion
So far, we tested image transmission in the case of a homogeneous medium, but what would be the results in more complex conditions ? Here, we study the robustness of this technique in the presence of ballistic contributions, that is, a fraction of light that has not been scattered at all. The singular values of Kobs are proportional to
the amplitude transmitted through each channel of the system. Ballistic contributions should give rise to strong singular values,
NATURE COMMUNICATIONS | 1:81 | DOI: 10.1038/ncomms1078 | www.nature.com/naturecommunications
2010 Macmillan Publishers Limited. All rights reserved.
ARTICLE
NATURE COMMUNICATIONS | DOI: 10.1038/ncomms1078
120
100
80
60
40
20
0
0.9
1
Optimal MSO
0.8
0.8
0.7
Correlation coefficient
Correlation coefficient
0.6
0.6
0.5
0.4
0.4
0.2
0.3
Inversion
Phase conjugation
0.2
0
103
104 102 101 100 101 102
Singular valuescount
0.1
Normalized singular value scale for
~
Figure 4 | Inuence of the transmission channels on the reconstruction correlation coefcient between Eimg and Eimg as a function of s (line)
and singular value distribution of Kobs with ballistic contributions in the transmission matrix, averaged over 100 virtual realizations of disorder.
Both s and singular values share the same scale on the abscissa axis. High singular value ballistic contributions (highlighted by the black circle) strongly degrade the reconstruction in phase conjugation, whereas MSO is unaffected.
0 1 2 3 4 5 6
7 8 9 10 11
Ratio
Ratio
0.7
0.6
0.5
0.4
0
0.3
0.2
0.1
0 1 2 3 4 5 6 7 8 9 10 11
Figure 3 | Inuence of the number of output detection modes. (a) Correlation coefcient between Eimg and Eobj as a function of the asymmetric ratio = M/N of output to input pixels for MSO (dashed line) and for pseudoinversion (solid line), without any averaging. Error bars correspond to the dispersion of the results over 10 realizations. (b) Experimental (solid line) and MarcenkoPastur16 predictions (dashed line) for the minimum normalized singular value as a function of . The horizontal line show the experimental noise level sopt .
corresponding to the apparition of channels of high transmission. These are not spatially homogeneously distributed in energy, contrarily to multiply scattered contributions. Phase conjugation maximizes energy transmission in channel of maximum transmission12.
Therefore, ballistic high singular values contributions should be predominant in phase conjugation, independent of the image Eobj,
and will not efficiently contribute to image reconstruction. MSO should not be aected, as it reaches the optimum intermediate between inversion, which is stable except for singular values below noise level, and phase conjugation, which forces energy in maximum singular value channels. In other words, MSO will lower the weight of channels that do not efficiently contribute to the image reconstruction.
To experimentally study this eect, we moved the collection objective closer to the sample on a thinner and less homogeneous region, where some ballistic light could be recorded. We study in Figure 4 the quality of the reconstruction as a function of for both experimental conditions (with and without ballistic contributions). Both experiments give comparable results, with 93.6 and 94.5% correlation coefficient, with the optimal MSO operator, and both give very low correlation results for inverse matrix operator. With the phase conjugation operator (equivalent to MSO for high ), the experiment sensitive to ballistic contributions give a low correlation coefficient of around 35%, to be compared with the value of 75.7% that we obtained through the multiple scattering sample. This dierence can be explained by the presence of a few high singular values contributions (two times greater than the maximum of the other singular values) that perturbate the image reconstruction.
To conclude, we have shown that the TM allows a rapid and accurate reconstruction of an arbitrary image aer propagation
through a strongly scattering medium (see Supplementary Movie 1). Our approach gives a general framework for coherent imaging in complex media, going well beyond focusing and phase conjugation. It is valid for any linear complex media, and could be extended to several novel photonic materials, whatever the amount of scattering or disorder (from complete disorder to weakly disordered photonic crystals26, and from superdiusive27 to Anderson localization28). The quality of the reconstruction can be increased by harnessing the degrees of freedom of our system, and is very resilient to noise. In addition to its obvious interest for imaging, this experiment strikingly shows that manipulation of wave in complex media is far from limited to single or multipoint focusing. In particular, owing to spatial reciprocity, a similar experiment could be performed using an amplitude and phase modulator by shaping the input wavefront to form an image at the output of an opaque medium, which would allow a resolution solely limited by the numerical aperture of the scattering medium10. The main current limitation is the speed of the TM measurement, which is limited only by the SLM. Nevertheless, faster technologies emerge, such as micromirror arrays or ferromagnetic SLMs, that might in the future widen the range of application domains for this approach, including the eld of biological imaging.
Methods
Imaging setup. The experimental setup consists of an incident light from a 532 nm laser source (Laser Quantum, Torus) that is expanded, spatially modulated by a SLM (Holoeye, LCR 2500) and focused on an opaque strongly scattering medium: 80 25 mthick deposit of ZnO (SigmaAldrich, cat. no. 96479), with a measured transport mean free path of 6 2 m on a standard microscope glass slide. Polarization optics select an almost phaseonly modulation mode29 of the incident beam, with < 10% residual amplitude modulation. The surface of the SLM is imaged on the pupil of a 10 objective; thus, a pixel of the SLM matches a wave vector at the entrance of the scattering medium. The beam is focused at one side of the sample and the output intensity speckle is imaged on the far side (0.3 mm from the surface of the sample) by a 40 objective onto a 10bit CCD camera (AVT Dolphin F145B).
Generation of the amplitude object. As there is no simple way to control the amplitude and phase of the incident beam, we generate a virtual amplitude object ( [ , ])
E sm
obj obj
with 0 1 by substracting twophase objects. This method is more exible than placing a real amplitude object in the plane of the SLM. From any phase mask Ephase
( )
1 , we could generate a second mask Ephase
( )
2 , where the phase of the mth
pixel is shied by smobjp. We have e e e
m m
( ) ( )
2 1
= objp with emj() being the jth element of
E jphase
( ) . | |
( ) ( )
E E
phase phase
2 1
is proportional to sin( / )
Eobjp 2 and can be estimated by
E W E E
ism
( ) ( )
2 1 where Eout()1 (resp. Eout()2) is the complex amplitude of the output speckle resulting from the input vector Ephase
( )
1 (resp. Ephase
( )
2 ).
img out out
=
| ( )|
NATURE COMMUNICATIONS | 1:81 | DOI: 10.1038/ncomms1078 | www.nature.com/naturecommunications
2010 Macmillan Publishers Limited. All rights reserved.
NATURE COMMUNICATIONS | DOI: 10.1038/ncomms1078
ARTICLE
References
1. Goodman, J. W. Introduction to Fourier optics (Roberts & Company Publishers,
2005).
2. Sebbah, P. Waves and Imaging through Complex Media (Kluwer Academic, 2001).
3. Dylov, D. V. & Fleischer, J. W. Nonlinear selfltering of noisy images via dynamical stochastic resonance. Nat. Photon. 4, 323328 (2010).
4. Wang, L., Ho, P. P., Liu, C., Zhang, G. & Alfano, R. R. Ballistic 2D imaging through scattering walls using an ultrafast optical Kerr gate. Science 253, 769771 (1991).
5. Shiratori, A. & Obara, M. Photorefractive coherencegated interferometry. Rev. Sci. Instrum. 69, 37413745 (1998).
6. Derode, A., Roux, P. & Fink, M. Robust acoustic time reversal with highorder multiple scattering. Phys. Rev. Lett. 75, 42064209 (1995).
7. Yaqoob, Z., Psaltis, D., Feld, M. S. & Yang, C. Optical phase conjugation for turbidity suppression in biological samples. Nat. Photon. 2, 110115 (2008).
8. Vellekoop, I. M. & Mosk, A. P. Focusing coherent light through opaque strongly scattering media. Opt. Lett. 32, 23092311 (2007).
9. Cizmr, T., Mazilu, M. & Dholakia, K. In situ wavefront correction and its application to micromanipulation. Nat. Photon. 4, 388394 (2010).
10. Vellekoop, I. M., Lagendijk, A. & Mosk, A. P. Exploiting disorder for perfect focusing. Nat. Photon. 4, 320322 (2010).
11. Sassaroli, A. et al. Monte Carlo procedure for investigating light propagation and imaging of highly scattering media. Appl. Opt. 37, 73927400 (1998).
12. Tanter, M., Thomas, J. L. & Fink, M. Time reversal and the inverse lter. J. Acoust. Soc. Am. 108, 223234 (2000).
13. Montaldo, G., Tanter, M. & Fink, M. Real time inverse lter focusing through iterative time reversal. J. Acoust. Soc. Am. 115, 768775 (2004).
14. Lerosey, G., De Rosny, J., Tourin, A. & Fink, M. Focusing beyond the diraction limit with fareld time reversal. Science 315, 11201122 (2007).
15. Popo, S. M. et al. Measuring the transmission matrix in optics: an approach to the study and control of light propagation in disordered media. Phys. Rev. Lett. 104, 100601 (2010).
16. Marenko, V. & Pastur, L. Distribution of eigenvalues for some sets of random matrices. Sbornik Math. 1, 457483 (1967).
17. Gore, D., Paulraj, A. & Nabar, R. Introduction to Space-Time Wireless Communication (Cambridge University Press, 2004).
18. Arridge, S. R. Optical tomography in medical imaging. Inverse Probl. 15, R41R94 (1999).
19. Corlu, A. et al. Threedimensional in vivo uorescence diuse optical tomography of breast cancer in humans. Opt. Express 15, 66966716 (2007).
20. Maire, G. et al. Experimental demonstration of quantitative imaging beyond Abbes limit with optical diraction tomography. Phys. Rev. Lett. 21, 213905 (2009).
21. Yariv, A., Fekete, D. & Pepper, D. M. Compensation for channel dispersion by nonlinear optical phase conjugation. Opt. Lett. 4, 5254 (1979).
22. Derode, A., Tourin, A. & Fink, M. Random multiple scattering of ultrasound. II. Is time reversal a selfaveraging process? Phys. Rev. E 64, 036606 (2001).23. Tikhonov, A. N. Solution of incorrectly formulated problems and the regularization method. Soviet Math. Dokl. 4, 10351038 (1963).
24. Lemoult, F., Lerosey, G., De Rosny, J. & Fink, M. Manipulating spatiotemporal degrees of freedom of waves in random media. Phys. Rev. Lett. 103, 173902 (2009).
25. Sprik, R., Tourin, A., De Rosny, J. & Fink, M. Eigenvalue distributions of correlated multichannel transfer matrices in strongly scattering systems. Phys. Rev. B 78, 12202 (2008).
26. Garca, P. D., Sapienza, R., FroufePrez, L. S. & Lpez, C. Strong dispersive eects in the lightscattering mean free path in photonic gaps. Phys. Rev. B 79, 241109 (2009).
27. Barthelemy, P., Bertolotti, J. & Wiersma, D. S. A Lvy ight for light. Nature 453, 495498 (2008).
28. Wiersma, D. S., Bartolini, P., Lagendijk, A. & Righini, R. Localization of light in a disordered medium. Nature 390, 671673 (1997).
29. Davis, J. A., Nicols, J. & Mrquez, M. A. Phasor analysis of eigenvectors generated in liquidcrystal displays. Appl. Opt. 41, 45794584 (2002).
Acknowledgments
This work was made possible by the nancial support from Direction Gnrale de lArmement and BQR funding from Universit Pierre et Marie Curie and ESPCI. We thank Mathieu Leclerc for performing the sample characterization.
Author contributions
S.P., G.L., A.C.B. and S.G. contributed to the conception of the experiment; S.P. performed the experiment; S.P., G.L. and S.G. analysed the experimental data and wrote the paper; all authors discussed the results and commented on the paper.
Additional information
Supplementary Information accompanies this paper on http://www.nature.com/ naturecommunications
Competing nancial interests: The authors declare no competing nancial interests.
Reprints and permission information is available online at http://npg.nature.com/ reprintsandpermissions/
How to cite this article: Popo, S. et al. Image transmission through an opaque material. Nat. Commun. 1:81 doi: 10.1038/ncomms1078 (2010)
NATURE COMMUNICATIONS | 1:81 | DOI: 10.1038/ncomms1078 | www.nature.com/naturecommunications
2010 Macmillan Publishers Limited. All rights reserved.
You have requested "on-the-fly" machine translation of selected content from our databases. This functionality is provided solely for your convenience and is in no way intended to replace human translation. Show full disclaimer
Neither ProQuest nor its licensors make any representations or warranties with respect to the translations. The translations are automatically generated "AS IS" and "AS AVAILABLE" and are not retained in our systems. PROQUEST AND ITS LICENSORS SPECIFICALLY DISCLAIM ANY AND ALL EXPRESS OR IMPLIED WARRANTIES, INCLUDING WITHOUT LIMITATION, ANY WARRANTIES FOR AVAILABILITY, ACCURACY, TIMELINESS, COMPLETENESS, NON-INFRINGMENT, MERCHANTABILITY OR FITNESS FOR A PARTICULAR PURPOSE. Your use of the translations is subject to all use restrictions contained in your Electronic Products License Agreement and by using the translation functionality you agree to forgo any and all claims against ProQuest or its licensors for your use of the translation functionality and any output derived there from. Hide full disclaimer
Copyright Nature Publishing Group Sep 2010
Abstract
Optical imaging relies on the ability to illuminate an object, collect and analyse the light it scatters or transmits. Propagation through complex media such as biological tissues was so far believed to degrade the attainable depth, as well as the resolution for imaging, because of multiple scattering. This is why such media are usually considered opaque. Recently, we demonstrated that it is possible to measure the complex mesoscopic optical transmission channels that allow light to traverse through such an opaque medium. Here, we show that we can optimally exploit those channels to coherently transmit and recover an arbitrary image with a high fidelity, independently of the complexity of the propagation.
You have requested "on-the-fly" machine translation of selected content from our databases. This functionality is provided solely for your convenience and is in no way intended to replace human translation. Show full disclaimer
Neither ProQuest nor its licensors make any representations or warranties with respect to the translations. The translations are automatically generated "AS IS" and "AS AVAILABLE" and are not retained in our systems. PROQUEST AND ITS LICENSORS SPECIFICALLY DISCLAIM ANY AND ALL EXPRESS OR IMPLIED WARRANTIES, INCLUDING WITHOUT LIMITATION, ANY WARRANTIES FOR AVAILABILITY, ACCURACY, TIMELINESS, COMPLETENESS, NON-INFRINGMENT, MERCHANTABILITY OR FITNESS FOR A PARTICULAR PURPOSE. Your use of the translations is subject to all use restrictions contained in your Electronic Products License Agreement and by using the translation functionality you agree to forgo any and all claims against ProQuest or its licensors for your use of the translation functionality and any output derived there from. Hide full disclaimer