dering supposes that the retina cells are independent
and fire asynchronously.
One last major advantage is that our algorithm is
multi-threadable. Indeed, there is no possible data
hazard in the decoding procedure. Each value of f
∗
N
s
is
independent from the others and the concurrent read-
ing in Φ
∗
Φ does not alter the data.
Though it is to be noted that, in some implementa-
tions, the rank order decoder inaccuracy is enhanced
for a supplemental reason: the inexactness of the
look-up-table that might be used used to re-generate
the transform coefficients c
p
. In this work and for a
sake of clarity, we considered only the filters over-
lap as a source of error. Otherwise the reader could
not distinguish the part of error due to the filters over-
lap and the other part that is due to the look-up-table.
In our case, the decoder is supposed to be provided
with an optimal look-up table. Still the approach pre-
sented remains (i) relevant because the inaccuracy of
any look-up-table that might be used will affect both
the ”classical” reconstruction and the ”dual frame”,
(ii) novel through the introduction of the frames the-
ory and (iii) general and thus could be extended to
several models of cortical areas using redundant rep-
resentations.
REFERENCES
Bhattacharya, B. S. and Furber, S. (2007). Maximising in-
formation recovery from rank-order codes. In Pro-
ceedings of SPIE, volume 6570, Orlando, FL, U.S.A.
Bhattacharya, B. S. and Furber, S. (2010). Biologically
inspired means for rank-order encoding images: A
quantitative analysis. IEEE Trans. Neural Netw.,
21(7):1087 –1099.
Burt, P. and Adelson, E. (1983). The Laplacian pyramid
as a compact image code. IEEE Trans. Commun.,
31(4):532–540.
Do, M. and Vetterli, M. (2003). Framing pyramids. IEEE
Trans. Signal Process., 51(9):2329–2342.
Duffin, R. J. and Schaeffer, A. C. (1952). A class of non-
harmonic fourier series. Transactions of the American
Mathematical Society, 72(2):pp. 341–366.
Field, D. (1994). What is the goal of sensory coding? Neu-
ral Comput., 6(4):559–601.
Gollisch, T. and Meister, M. (2008). Rapid neural coding
in the retina with relative spike latencies. Science,
319(5866):1108–1111.
Golub, G. and Van Loan, C. (1996). Matrix computations.
Johns Hopkins Univ Pr.
Kovacevic, J. and Chebira, A. (2008). An introduction to
frames. Foundations and Trends in Signal Processing,
Now Pub.
Masmoudi, K., Antonini, M., Kornprobst, P., and Perrinet,
L. (2010). A novel bio-inspired static image com-
pression scheme for noisy data transmission over low-
bandwidth channels. In Proceedings of ICASSP, pages
3506–3509. IEEE.
Masmoudi, K., Antonini, M., Kornprobst, P., and Perrinet,
L. (2011). A bio-inspired image coder with temporal
scalability. In Proceedings of ACIVS, pages 447–458.
Springer.
Meister, M. and Berry, M. (1999). The neural code of the
retina. Neuron, pages 435–450.
Perrinet, L., Samuelides, M., and Thorpe, S. (2004). Cod-
ing static natural images using spiking event times:
do neurons cooperate? IEEE Trans. Neural Netw.,
15(5):1164–1175.
Rakshit, S. and Anderson, C. (1995). Error correction with
frames: the Burt-Laplacian pyramid. IEEE Trans. Inf.
Theory, 41(6):2091–2093.
Rieke, F., Warland, D., de Ruyter van Steveninck, R., and
Bialek, W. (1997). Spikes: Exploring the Neural
Code. The MIT Press, Cambridge, MA, USA.
Rodieck, R. (1965). Quantitative analysis of the cat reti-
nal ganglion cells response to visual stimuli. Vision
Research, 5(11):583–601.
Thorpe, S. (1990). Spike arrival times: A highly efficient
coding scheme for neural networks. In Eckmiller, R.,
Hartmann, G., and Hauske, G., editors, Parallel Pro-
cessing in Neural Systems and Computers, pages 91–
94. Elsevier.
Thorpe, S. (2010). Ultra-rapid scene categorization with a
wave of spikes. In Biologically Motivated Computer
Vision, pages 335–351. Springer.
Thorpe, S., Fize, D., and Marlot, C. (1996). Speed of pro-
cessing in the human visual system. Nature, 381:520–
522.
Van Rullen, R. and Thorpe, S. (2001). Rate coding versus
temporal order coding: What the retinal ganglion cells
tell the visual cortex. Neural Comput., 13:1255–1283.
Wang, Z., Bovik, A., Sheikh, H., and Simoncelli, E. (2004).
Image quality assessment: from error visibility to
structural similarity. IEEE Transactions on Image
Processing, 13(4):600–612.
BIOSIGNALS 2012 - International Conference on Bio-inspired Systems and Signal Processing
162