CeGP Seminar

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Event Details
  • Date/Time:
    • Wednesday December 9, 2015 - Thursday December 10, 2015
      3:00 pm - 3:59 pm
  • Location: Centergy One 5186 (CSIP Library)
  • Phone:
  • URL:
  • Email:
  • Fee(s):
    N/A
  • Extras:
Contact

Muhammad Amir Shafiq

amirshafiq@gatech.edu

 

Summaries

Summary Sentence: Real-time wireless seismic data acquisitionSparse-promoting Full Waveform Inversion based on Online Orthonormal Dictionary Learning

Full Summary: Sparse-promoting Full Waveform Inversion based on Online Orthonormal Dictionary Learning - Lingchen Zhu

Title: Sparse-promoting Full Waveform Inversion based on Online Orthonormal Dictionary Learning

Speaker: Lingchen Zhu

Abstract:
Full waveform inversion (FWI) delivers high-resolution images of a subsurface medium model by minimizing iteratively the least-squares misfit between the observed and simulated seismic data. Due to the limited accuracy of the starting model and the inconsistency of the seismic waveform data, the FWI problem is inherently ill-posed, so that regularization techniques are typically applied to obtain better models. FWI is also a computationally expensive problem because modern seismic surveys cover very large areas of interest and collect massive volumes of data. The dimensionality of the problem and the heterogeneity of the medium both stress the need for faster algorithms and sparse regularization techniques to accelerate and improve imaging results.

This talk develops a compressive sensing approach for the FWI problem, where the sparsity of model perturbations is exploited within learned dictionaries. Based on stochastic approximations, the dictionaries are updated iteratively to adapt to dynamic model perturbations. Meanwhile, the dictionaries are kept orthonormal in order to maintain the corresponding transform in a fast and compact manner without introducing extra computational overhead to FWI. Such a sparsity regularization on model perturbations enables us to take randomly subsampled data for computation and thus significantly reduce the cost. Compared with other approaches that employ sparsity constraints in the fixed curvelet transform domain, our approach can achieve more robust inversion results with better model fit and visual quality.

 

Speaker Bio:
Lingchen Zhu received the B.S. degree in Electrical and Computer Engineering from Southeast University, Nanjing, China, in 2008 and the M.S. degree from Shanghai Jiao Tong University, Shanghai, China, in 2011. He also received the M.S. degree from the School of Electrical and Computer Engineering, Georgia Institute of Technology, Atlanta, GA, USA, where he is currently pursing the Ph.D. degree in the field of digital signal processing under the supervision of Prof. James H. McClellan. His research interest includes signal sparse coding and representation, compressive sensing, seismic data processing and full waveform inversion. He spent the summer of 2013 in InterDigital, Inc., Melville, NY, USA and the summer of 2015 in Schlumberger-Doll Research Center in Boston, MA, USA, both as a research intern.

Pizza and Refreshments will also be served at the seminar.

CeGP seminars can also be found at: http://cegp.ece.gatech.edu/seminar/

Additional Information

In Campus Calendar
No
Groups

School of Electrical and Computer Engineering

Invited Audience
Undergraduate students, Faculty/Staff, Graduate students
Categories
Seminar/Lecture/Colloquium
Keywords
No keywords were submitted.
Status
  • Created By: Ashlee Gardner
  • Workflow Status: Published
  • Created On: Dec 2, 2015 - 6:30am
  • Last Updated: Apr 13, 2017 - 5:17pm