• DocumentCode
    1332635
  • Title

    Markov random field image segmentation using cellular neural network

  • Author

    Szirányi, Tamás ; Zerubia, Josiane

  • Author_Institution
    Comput. & Autom. Inst., Hungarian Acad. of Sci., Budapest, Hungary
  • Volume
    44
  • Issue
    1
  • fYear
    1997
  • fDate
    1/1/1997 12:00:00 AM
  • Firstpage
    86
  • Lastpage
    89
  • Abstract
    Markovian approaches to early vision processes need a huge amount of computing power. These algorithms can usually be implemented on parallel computing structures. With the Cellular Neural Networks (CNN), a new image processing tool is coming into consideration. Its VLSI implementation takes place on a single analog chip containing several thousands of cells. Herein we use the CNN UM architecture for statistical image segmentation. The Modified Metropolis Dynamics (MMD) method can be implemented into the raw analog architecture of the CNN. We are able to implement a (pseudo) random field generator using one layer (one memory/cell) of the CNN. We can introduce the whole pseudostochastic segmentation process in the CNN architecture using 8 memories/cell. We use simple arithmetic functions (addition, multiplication), equality-test between neighboring pixels and very simple nonlinear output functions (step, jigsaw). With this architecture, a real VLSI CNN chip can execute a pseudostochastic relaxation algorithm of about 100 iterations in about 1 ms. In the proposed solution the segmentation is unsupervised. We have developed a pixel-level statistical estimation model. The CNN turns the original image into a smooth one. Then we have two gray-level values for every pixel: the original and the smoothed one. These two values are used for estimating the probability distribution of region label at a given pixel. Using the conventional first-order Markov Random Field (MRF) model, some misclassification errors remained at the region boundaries, because of the estimation difficulties in case of low SNR. By using a greater neighborhood, this problem has been avoided. In our CNN experiments, we used a simulation system with a fixed-point integer precision of 16 bits. Our results show that even in the case of the very constrained conditions of value-representations (the interval is (-64,+64), the accuracy is 0.002) can result in an effective and acceptable segmentation
  • Keywords
    Markov processes; VLSI; analogue integrated circuits; analogue processing circuits; cellular neural nets; estimation theory; image segmentation; neural chips; neural net architecture; parallel algorithms; probability; CNN UM architecture; Markov random field image segmentation; Modified Metropolis Dynamics method; VLSI implementation; analog chip; cellular neural network; gray-level values; parallel computing structures; pixel-level statistical estimation model; probability distribution; pseudorandom field generator; pseudostochastic relaxation algorithm; pseudostochastic segmentation process; statistical image segmentation; Arithmetic; Cellular neural networks; Computer architecture; Computer vision; Image processing; Image segmentation; Markov random fields; Memory architecture; Parallel processing; Very large scale integration;
  • fLanguage
    English
  • Journal_Title
    Circuits and Systems I: Fundamental Theory and Applications, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1057-7122
  • Type

    jour

  • DOI
    10.1109/81.558448
  • Filename
    558448