Abstract
In this paper, we make an experimental study of some techniques of image compression based on artificial neural networks, particularly algorithm based on back-propagation gradient error [5]. We also present a new hybrid method based on the use of a multilayer perceptron which combines hierarchical and adaptative schemes. The idea is to compute in a parallel way, the back propagation algorithm on an adaptative neural network that uses sub-neural networks with a hierarchical structure to classify the image blocks in entry according to their activity. The results come from the Yann Le Cun database [7], and show that the proposed hybrid method gives good results in some cases.
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References
Benamrane, N., Benhamed Daho, Z., Shen, J.: Compression des images medicales par reseaux de neurones. USTO, Traitement Du Signal 6, 631–638 (1998)
Benbenisti, et al.: New simple three-layer neural network for image compression. Opt. Eng. 36, 1814–1817 (2000)
Carrato, S.: Neural networks for image compression. In: Neural Networks: Adv. and Appli., 2nd edn., vol. 2, pp. 177–198. Gelende Pub. North-Holland, Amsterdam (1992)
de Bodt, E., Cottrell, M., Verleysen, M.: Using the Kohonen algorithm for quick initialisation of simple competitive learning algorithm. In: European Symposium on Artificial Neural Networks (2001)
Jiang, J.: Images compression with neural networks, A Survey. Signal Processing: Image Communication (1998)
Karayiannis, N.B., Pai, P.I.: Fuzzy vector quantization algorithm and their application in image compression. IEEE Trans. Image Process. 4(9), 1193–1202 (2008)
Le-Cun, Y.: A competitive learning method for asymmetric threshold network. In: COGNITIVA 1985, Paris, June 4-7 (1985)
Mallat, S.G.: A Wavelet Tour of Signal Processing, pp. 145–150. Academic Press (1999)
Mallat, S.G.: A theory for multiresolution signal decomposition: the wavelet representation. IEEE Trans. Pattern Anal. Mach. Intell. 11(7), 674–693 (1989)
Namphol, A., Chin, S., Arozullah, M.: Image compression with a hierarchical neural network. IEEE Trans. Aerospace Electronic Systems 32(1), 326–337 (1996)
Rabbani, M., Jones, P.W.: Digital Image Compression Techniques. Tutorial Texts. SPIE Optical Engineering Press (1991)
Ramel, M.J.Y., Agen, F., Michot, J.: Fractal compression, Jacquin methods, triangular subdivisions and Delaunay. EPUT, Depts.-Info (2004)
Zhang, L., et al.: Generating and conding of fractal graphs by neural network and mathematical morphology methods. IEEE Trans. Neural Networks 7(2), 400–407 (1996)
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Kouamo, S., Tangha, C. (2013). Image Compression with Artificial Neural Networks. In: Herrero, Á., et al. International Joint Conference CISIS’12-ICEUTE´12-SOCO´12 Special Sessions. Advances in Intelligent Systems and Computing, vol 189. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-642-33018-6_53
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DOI: https://doi.org/10.1007/978-3-642-33018-6_53
Publisher Name: Springer, Berlin, Heidelberg
Print ISBN: 978-3-642-33017-9
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