Author_Institution :
Dept. of Electr. & Comput. Eng., Massachusetts Univ., Dartmouth, MA
Abstract :
In the petroleum industry, stacking, one of the principal steps of conventional seismic signal processing, plays an important role in enhancing events and cancelling random and coherent noises by utilizing the predesigned redundancy in the seismic data. This paper demonstrates that by applying an alternative technique, Factor Analysis, to the same dataset, better subsurface image of the earth can be obtained. Contrary to stacking, it takes into consideration the scaling of the latent signal and makes explicit use of the second order statistics, obtaining higher Signal-to-Noise Ratio. Moreover, Factor Analysis is compared with Principal Component Analysis and Independent Component Analysis in processing the synthetic Marmousi dataset
Keywords :
geophysical prospecting; geophysical signal processing; hydrocarbon reservoirs; petroleum industry; principal component analysis; seismic waves; seismology; Factor Analysis; Independent Component Analysis; Principal Component Analysis; Signal-to-Noise Ratio; earth subsurface image; ocean remote sensing; petroleum industry; second order statistics; seismic signal processing; synthetic Marmousi dataset; Earth; Image analysis; Independent component analysis; Noise cancellation; Oceans; Petroleum industry; Remote sensing; Signal processing; Stacking; Statistics;