Also our method enable the guided image filter to ap-
ply for a high-dimensional image such as a hyper-
spectral image. HGF has a limitation that the compu-
tational cost becomes high by increasing the number
of dimensions. For this reason, we also introduce the
dimensionality reduction technique for efficient com-
puting. Experimental results showed that HGF can
work robustly in noisy regions and transfer detailed
regions. In addition, we can compute efficiently by
using the dimensionality reduction technique.
We construct the high-dimensional guidance im-
age from the square neighborhood in each pixel.
Therefore, as our future work, we consider the investi-
gation of the generating method for high-dimensional
guidance image.
ACKNOWLEDGEMENT
This work was supported by JSPS KAKENHI Grant
Number 15K16023.
REFERENCES
Adams, A., Baek, J., and Davis, M. A. (2010). Fast high-
dimensional filtering using the permutohedral lattice.
Computer Graphics Forum, 29(2):753–762.
Adams, A., Gelfand, N., Dolson, J., and Levoy, M. (2009).
Gaussian kd-trees for fast high-dimensional filtering.
ACM Trans. on Graphics, 28(3).
Bae, S., Paris, S., and Durand, F. (2006). Two-scale tone
management for photographic look. ACM Trans. on
Graphics, 25(3):637–645.
Buades, A., Coll, B., and Morel, J. M. (2005). A non-local
algorithm for image denoising. In Proc. IEEE Con-
ference on Computer Vision and Pattern Recognition
(CVPR).
Crow, F. C. (1984). Summed-area tables for texture map-
ping. In Proc. ACM SIGGRAPH, pages 207–212.
Durand, F. and Dorsey, J. (2002). Fast bilateral filtering
for the display of high-dynamic-range images. ACM
Trans. on Graphics, 21(3):257–266.
Eisemann, E. and Durand, F. (2004). Flash photography
enhancement via intrinsic relighting. ACM Trans. on
Graphics, 23(3):673–678.
Fattal, R., Agrawala, M., and Rusinkiewicz, S. (2007). Mul-
tiscale shape and detail enhancement from multi-light
image collections. ACM Trans. on Graphics, 26(3).
Fujita, S., Fukushima, N., Kimura, M., and Ishibashi, Y.
(2015). Randomized redundant dct: Efficient denois-
ing by using random subsampling of dct patches. In
Proc. ACM SIGGRAPH Asia Technical Briefs.
Fukushima, N., Fujita, S., and Ishibashi, Y. (2015). Switch-
ing dual kernels for separable edge-preserving fil-
tering. In Proc. IEEE International Conference on
Acoustics, Speech and Signal Processing (ICASSP).
Gastal, E. S. L. and Oliveira, M. M. (2011). Domain
transform for edge-aware image and video processing.
ACM Trans. on Graphics, 30(4).
Gastal, E. S. L. and Oliveira, M. M. (2012). Adaptive man-
ifolds for real-time high-dimensional filtering. ACM
Trans. on Graphics, 31(4).
He, K., Shun, J., and Tang, X. (2010). Guided image ffil-
tering. In Proc. European Conference on Computer
Vision (ECCV).
He, K., Sun, J., and Tang, X. (2009). Single image haze
removal using dark channel prior. In Proc. IEEE Con-
ference on Computer Vision and Pattern Recognition
(CVPR).
Hosni, A., Rhemann, C., Bleyer, M., Rother, C., and
Gelautz, M. (2013). Fast cost-volume filtering for vi-
sual vorrespondence and beyond. IEEE Trans. on Pat-
tern Analysis and Machine Intelligence, 35(2):504–
511.
Kang, X., Li, S., and Benediktsson, J. (2014). Spectral-
spatial hyperspectral image classification with edge-
preserving filtering. IEEE Trans. on Geoscience and
Remote Sensing, 52(5):2666–2677.
Kopf, J., Cohen, M., Lischinski, D., and Uyttendaele, M.
(2007). Joint bilateral upsampling. ACM Trans. on
Graphics, 26(3).
Melgani, F. and Bruzzone, L. (2004). Classification of hy-
perspectral remote sensing images with support vector
machines. IEEE Trans. on Geoscience and Remote
Sensing, 42(8):1778–1790.
Paris, S. and Durand, F. (2009). A fast approximation of
the bilateral filter using a signal processing approach.
International Journal of Computer Vision, 81(1):24–
52.
Petschnigg, G., Agrawala, M., Hoppe, H., Szeliski, R., Co-
hen, M., and Toyama, K. (2004). Digital photography
with flash and no-flash image pairs. ACM Trans. on
Graphics, 23(3):664–672.
Pham, T. Q. and Vliet, L. J. V. (2005). Separable bilat-
eral filtering for fast video preprocessing. In Proc.
IEEE International Conference on Multimedia and
Expo (ICME).
Porikli, F. (2008). Constant time o(1) bilateral filtering. In
Proc. IEEE Conference on Computer Vision and Pat-
tern Recognition (CVPR).
Tasdizen, T. (2008). Principal components for non-local
means image denoising. In Proc. IEEE International
Conference on Image Processing (ICIP).
Tomasi, C. and Manduchi, R. (1998). Bilateral filtering for
gray and color images. In Proc. IEEE International
Conference on Computer Vision (ICCV).
Yang, Q. (2012). Recursive bilateral filtering. In Proc. Eu-
ropean Conference on Computer Vision (ECCV).
Yang, Q., Tan, K. H., and Ahuja, N. (2009). Real-time o(1)
bilateral filtering. In Proc. IEEE Conference on Com-
puter Vision and Pattern Recognition (CVPR).
VISAPP 2016 - International Conference on Computer Vision Theory and Applications
34