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Analysis of Approximate Inverses in Tomography I. Resolution Analysis of Common Inverses

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Abstract

The process of using physical data to produce images of important physical parameters is an inversion problem, and these are often called tomographic inverse problems when the arrangement of sources and receivers makes an analogy to x-ray tomographic methods used in medical imaging possible. Examples of these methods in geophysics include seismic tomography, ocean acoustic tomography, electrical resistance tomography, etc., and many other examples could be given in nondestructive evaluation and other applications. All these imaging methods have two stages: First, the data are operated upon in some fashion to produce the image of the desired physical quantity. Second, the resulting image must be evaluated in essentially the same timeframe as the image is being used as a diagnostic tool. If the resolution provided by the image is good enough, then a reliable diagnosis may ensue. If the resolution is not good enough, then a reliable diagnosis is probably not possible. But the first question in this second stage is always “How good is the resolution?” The concept of resolution operators and resolution matrices has permeated the geophysics literature since the work of Backus and Gilbert in the late 1960s. But measures of resolution have not always been computed as often as they should be because, for very data rich problems, these computations can actually be significantly more difficult/expensive than computing the image itself.

It is the purpose of this paper and its companion (Part II) to show how resolution operators/matrices can be computed economically in almost all cases, and to provide a means of comparing the resolution characteristics of many of the common approximate inverse methods. Part I will introduce the main ideas and analyze the behavior of standard methods such as damped least-squares, truncated singular value decomposition, the adjoint method, backprojection formulas, etc. Part II will treat many of the standard iterative inversion methods including conjugate gradients, Lanczos, LSQR, etc.

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References

  • K. Aki and P. Richards, Quantitative Seismology: Theory and Methods, Freeman: San Francisco, California, 1980.

    Google Scholar 

  • G. Backus and F. Gilbert, “The resolving power of gross earth data,” Geophys. J. R. Astron. Soc. vol. 16, pp. 169-205, 1968.

    Google Scholar 

  • G. Backus and F. Gilbert, “Uniqueness in the inversion of inaccurate gross earth data,” Philos. Trans. R. Soc. London vol. 266A, pp. 123-192, 1970.

    Google Scholar 

  • R. B. Bapat and T. E. S. Raghavan, Nonnegative Matrices and Applications, Cambridge University Press: Cambridge, 1997.

    Google Scholar 

  • J. G. Berryman, “Stable iterative reconstruction algorithm for nonlienar traveltime tomography,” Inverse Problems vol. 6, pp. 21-42, 1990.

    Google Scholar 

  • J. G. Berryman, “Analysis of approximate inverses in tomography. II. Iterative inverses,” Optimization and Engineering, to appear, 2000.

  • R. P. Bording, A. Gersztenkorn, L. R. Lines, J. A. Scales, and S. Treitel, “Applications of seismic travel-time tomography,” Geophys. J. R. Astron. Soc. vol. 90, pp. 285-303, 1987.

    Google Scholar 

  • J. F. Claerbout, Fundamentals of Geophysical Data Processing with Applications to Petroleum Prospecting, McGraw-Hill: New York, 1976, pp. 123-129.

    Google Scholar 

  • J. F. Claerbout and F. Muir, “Robust modeling with erratic data,” Geophysics vol. 38, pp. 826-844, 1973.

    Google Scholar 

  • K. A. Dines and R. J. Lytle, “Computerized geophysical tomography,” Proc. IEEE vol. 67, pp. 1065-1073, 1979.

    Google Scholar 

  • C. Eckart and G. Young, “The approximation of one matrix by another of lower rank,” Psychometrika vol. 1, pp. 211-218, 1936.

    Google Scholar 

  • R. P. Feynman, R. B. Leighton, and M. Sands, The Feynman Lectures on Physics, vol. I, Addison-Wesley: Reading Massachusetts, Ch. 26, 1963.

    Google Scholar 

  • G. Golub and W. Kahan, “Calculating the singular values and pseudo-inverse of a matrix,” SIAM J. Numer. Anal. vol. 2, pp. 205-224, 1965.

    Google Scholar 

  • G. H. Golub and C. F. Van Loan, Matrix Computations, Johns Hopkins University Press: Baltimore, 1989, p. 341.

    Google Scholar 

  • M. R. Hestenes and E. Stiefel, “Methods of conjugate gradients for solving linear systems,” J. Res. Nat. Bur. Stan. vol. B 49, pp. 409-436, 1952.

    Google Scholar 

  • P. J. Huber, Robust Statistical Procedures, SIAM: Philadelphia, Pennsylvania, 1977.

    Google Scholar 

  • D. D. Jackson, “Interpretation of inaccurate, insufficient, and inconsistent data,” Geophys. J. Roy. Astron. Soc. vol. 28, pp. 97-109, 1972.

    Google Scholar 

  • C. Lanczos, “An iterative method for the solution of the eigenvalue problem of lienar differential and integral operators,” J. Res. Nat. Bur. Stand. vol. 45, pp. 255-282, 1950.

    Google Scholar 

  • C. Lanczos, Linear Differential Operators, SIAM: Philadelphia, Pennsylvania, 1961, pp. 120-127, 1961.

    Google Scholar 

  • E. R. Lapwood and T. Usami, Free Oscillations of the Earth, Cambridge University Press: Cambridge, 1981.

    Google Scholar 

  • K. Levenberg, “A method for the solution of certain non-linear problems in least-squares,” Quart. Appl. Math. vol. 2, pp. 164-168, 1944.

    Google Scholar 

  • D. W. Marquardt, “An algorithm for least-squares estimation of nonolinear parameters,” SIAM J. Appl. Math. vol. 11, pp. 431-441, 1963.

    Google Scholar 

  • D. W. Marquardt, “Generalized inverses, ridge regression, biased linear estimation, and nonlinear estimation,” Technometrics. vol. 12, pp. 591-612, 1970.

    Google Scholar 

  • E. H. Moore, Bull. Amer. Math. Soc. vol. 26, pp. 394-395, 1920.

    Google Scholar 

  • A. Morelli and A. M. Dziewonski, “The harmonic expansion approach to the retrieval of deep Earth structure,” in Seismic Tomography, G. Nolet, ed., Reidel: Dordrecht, 1987, pp. 251-274.

    Google Scholar 

  • W. Munk, P. Worcester, and C. Wunsch, Ocean Acoustic Tomography, Cambridge University Press: Cambridge, 1995, pp. 239-271.

    Google Scholar 

  • G. Nolet ed., Seismic Tomography: With Application in Global Seismology and Exploration Geophysics, Reidel: Dordrecht, 1987.

    Google Scholar 

  • C. C. Paige and M. A. Saunders, “LSQR: An algorithm for sparse linear equations and sparse least squares,” ACM Trans. Math. Softw. vol. 8, pp. 43-71, 1982.

    Google Scholar 

  • R. Penrose, “A generalized inverse for matrices,” Proc. Cambridge Philos. Soc. vol. 51, pp. 406-413, 1955a.

    Google Scholar 

  • R. Penrose, “On best approximation solutions of linear matrix equations,” Proc. Cambridge Philos. Soc. vol. 52, pp. 17-19, 1955b.

    Google Scholar 

  • J. Rector, “Crosswell methods: Where are we, where are we going?” Geophysics vol. 60, pp. 629-630, 1995.

    Google Scholar 

  • M. A. Saunders, “Computing projections with LSQR,” BIT vol. 37, pp. 96-104, 1997.

    Google Scholar 

  • J. A. Scales, P. Docherty, and A. Gersztenkorn, “Regularisation of nonlinear inverse problems: Imaging the near-surface weathering layer,” Inverse Problems vol. 6, pp. 115-131, 1990.

    Google Scholar 

  • J. A. Scales and A. Gersztenkorn, “Robust methods in inverse theory,” Inverse Problems vol. 4, pp. 1071-1091, 1988.

    Google Scholar 

  • J. A. Scales, A. Gersztenkorn, and S. Treitel, “Fast l p solution of large, sparse, linear systems: Application to seismic travel time tomography,” J. Comput. Phys. vol. 75, pp. 314-333, 1988.

    Google Scholar 

  • A. N. Tikhonov and V. Y. Arsenin, Solution of Ill-Posed Problems, Winston: New York, 1977.

    Google Scholar 

  • S. V. Vorontsov and V. N. Zharkov, “Helioseismology: Theory and interpretation of experimental data,” Sov. Sci. Rev. E Astrophys. Space Phys. vol. 7, pp. 1-103, 1989.

    Google Scholar 

  • G. B. Whitham, Linear and Nonlinear Waves, Wiley: New York, 1974, Ch. 7, pp. 247-250.

    Google Scholar 

  • R. A. Wiggins, “The general linear inverse problem: Implications of surface waves and free oscillations for Earth structure,” Rev. Geophys. Space Phys. vol. 10, pp. 251-285, 1972.

    Google Scholar 

  • T. J. Yorkey, J. G. Webster and W. J. Tompkins, “Comparing reconstruction algorithms for electrical impedance tomography,” IEEE Trans. Biomed. Engng. vol. BME-34, pp. 843-852, 1987.

    Google Scholar 

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Berryman, J.G. Analysis of Approximate Inverses in Tomography I. Resolution Analysis of Common Inverses. Optimization and Engineering 1, 87–115 (2000). https://doi.org/10.1023/A:1010098523281

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