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Details

Automated Pollen Image Classification

Date Issued
December 1, 2011
Author(s)
Haas, Nicholas Quentin
Advisor(s)
J. Douglas Birdwell
Additional Advisor(s)
Tse-Wei Wang, Roger Horn
Abstract

This Master of Science thesis reviews previous research, proposes a method anddemonstrates proof-of-concept software for the automated matching of pollen grainimages to satisfy degree requirements at the University of Tennessee. An ideal imagesegmentation algorithm and shape representation data structure is selected, alongwith a multi-phase shape matching system. The system is shown to be invariantto synthetic image translation, rotation, and to a lesser extent global contrast andintensity changes. The proof-of-concept software is used to demonstrate how pollengrains can be matched to images of other pollen grains, stored in a database, thatshare similar features with up to a 75% accuracy rate.

Subjects

image classification

computer vision

pollen grain classifi...

shape matching

Disciplines
Other Computer Sciences
Degree
Master of Science
Major
Computer Science
Embargo Date
December 1, 2011
File(s)
Thumbnail Image
Name

haas.pdf

Size

3.93 MB

Format

Adobe PDF

Checksum (MD5)

9f111010a518d38db942651ef2fb32ea

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