Record Details

A novel method for detecting lines on a noisy image

ScholarsArchive at Oregon State University

Field Value
Title A novel method for detecting lines on a noisy image
Names Lin, Daniel (creator)
Sun, Bo (advisor)
Date Issued 2015-05 (iso8601)
Note Bachelor of Science (BS)
Abstract We developed an integration-based line detection algorithm. Existing line detection methods such as the Hough Transformation (HT) and its variants are insensitive to image noise. The reason is that HT finds lines by calculating the gradient of the image and assumes that the region where the gradient is the steepest is where lines exist. This is problematic because if an image has an extremely noisy region, then HT can produce false positive results. Using filters to remove noise on images can increase computational complexity. There are existing line detection algorithms
based on template matching that are robust against noise. However, those algorithms are complex
and hard to implement. Our method identifies lines by calculating the correlation score between a
set of template line images and the raw image. We calculate the correlation score by multiplying
each pixel between the template line image and the raw image and summing their product, or
integrating each pixel on the raw image. Our algorithm is simple to implement and requires no
application of noise filters onto a noisy image. Additionally, our algorithm removes the necessity
for users to use segmentation techniques such as Canny edge detection. We were able to use our
algorithm to extract collagen fibers from a noisy image produced by a confocal microscope.
Genre Thesis
Topic Image Processing
Identifier http://hdl.handle.net/1957/56121

© Western Waters Digital Library - GWLA member projects - Designed by the J. Willard Marriott Library - Hosted by Oregon State University Libraries and Press