Title :
Segmentation of seafloor sidescan imagery using Markov random fields and neural networks
Author :
Jiang, M. ; Stewart, W.K. ; Marra, M.
Author_Institution :
Dept. of Appl. Ocean Phys. & Eng., Woods Hole Oceanogr. Instn., MA, USA
Abstract :
Segmentation of seafloor acoustic imagery is of great importance in a wide range of applications. Although considerable successes have been achieved, a critical issue in this domain is the lack of reliable 2D image models from which segmentation and related processing can consistently proceed. The authors describe a nonparametric algorithm for the segmentation of seafloor sidescan imagery (SSI) based on a combination of Markov random fields and multiple layer perceptrons (MLP). SSI, which is considerably noisy and textured, is embodied by a hierarchy of Gibbs distributions. Segmentation of SSI is then considered as a maximum a posteriori estimation. To obtain better estimates of local likelihoods, an MLP is adopted for learning the distribution of observations from training data. Experimental results using data from a Pacific midocean ridge area are demonstrated
Keywords :
Markov processes; acoustic imaging; acoustic signal processing; bathymetry; feedforward neural nets; geophysical techniques; geophysics computing; image segmentation; oceanographic techniques; seafloor phenomena; sonar; Gibbs distributions; Markov random fields; acoustic imagery; acoustic measurement technique; bathymetry; feed forward neural net; image processing; image segmentation; learning; local likelihood; maximum a posteriori estimation; midocean ridge; multiple layer perceptron; neural network; nonparametric algorithm; ocean seafloor topography; oceanic crust; sidescan imagery; sonar imaging; Acoustic imaging; Geology; Image segmentation; Markov random fields; Neural networks; Oceans; Pixel; Reliability engineering; Sea floor; Sonar;
Conference_Titel :
OCEANS '93. Engineering in Harmony with Ocean. Proceedings
Conference_Location :
Victoria, BC
Print_ISBN :
0-7803-1385-2
DOI :
10.1109/OCEANS.1993.326232