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Identifying Plankton from Grayscale Silhouette ImagesKramer, Kurt A 27 October 2005 (has links)
Utilizing a continuous silhouette image of marine plankton produced by a device called SIPPER, developed by the Marine Sciences Department, individual plankton images were extracted, features were derived, and classification was performed. There were plankton recognition experiments performed in Support Vector Machine parameter tuning, Fourier descriptors, and feature selection.
Several groups of features were implemented, moments, gramulometric, Fourier transform for texture, intensity histograms, Fourier descriptors for contour, convex hull, and Eigen ratio. The Fourier descriptors were implemented in three different flavors sampling, averaging and hybrid (mix of sampling and averaging).
The feature selection experiments utilized a modified WRAPPER approach of which several flavors were explored including Best Case Next, Forward and Backward, and Beam Search. Feature selection significantly reduced the number of features required for processing, while at the same time maintaining the same level of classification accuracy. This resulted in reduced processing time for training and classification.
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A Quantitative Analysis of Shape Characteristics of Marine Snow Particles with Interactive Visualization: Validation of Assumptions in Coagulation ModelsDave, Palak P. 28 June 2018 (has links)
The Deepwater Horizon oil spill that started on April 20, 2010, in the Gulf of Mexico was the largest marine oil spill in the history of the petroleum industry. There was an unexpected and prolonged sedimentation event of oil-associated marine snow to the seafloor due to the oil spill. The sedimentation event occurred because of the coagulation process among oil associated marine particles. Marine scientists are developing models for the coagulation process of marine particles and oil, in order to estimate the amount of oil that may reach the seafloor along with marine particles. These models, used certain assumptions regarding the shape and the texture parameters of marine particles. Such assumptions may not be based on accurate information or may vary during and after the oil spill. The work performed here provided a quantitative analysis of the assumptions used in modeling the coagulation process of marine particles. It also investigated the changes in model parameters (shape and texture) during and after the Deepwater Horizon oil spill in different seasons (spring and summer). An Interactive Visualization Application was developed for data exploration and visual analysis of the trends in these parameters. An Interactive Statistical Analysis Application was developed to create a statistical summary of these parameter values.
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