학술논문

Empirical mode decomposition of hyperspectral images for segmentation of seagrass coverage
Document Type
Conference
Source
2014 IEEE International Conference on Imaging Systems and Techniques (IST) Proceedings Imaging Systems and Techniques (IST), 2014 IEEE International Conference on. :33-37 Oct, 2014
Subject
General Topics for Engineers
Hyperspectral imaging
Empirical mode decomposition
Image segmentation
Blades
Biology
Noise measurement
seagrasses
empirical mode decomposition
hyperspectral imaging
hyperspectral image processing
classification
segmentation
Language
ISSN
1558-2809
Abstract
Seagrasses are an integral part of the marine ecosystem, and can provide information about their environment based on their surface content. In particular, epiphytes and epifauna on seagrass blades are of interest to scientists. Empirical mode decomposition is applied to hyperspectral images obtained from seagrasses to separate hyperspectral data into component modes, and then to segment and classify the seagrass coverage. A sample spectrum is taken from the image for reference for each of the classes (seagrass leaf, tubeworm, epiphyte). Hypothesis testing on the higher modes for an entire image gives a semi-automated algorithm for classifying the contents of unknown spectra. A classifier is developed to segment the seagrass hyperspectral images and identify epiphytes on the seagrasses.