Skip to main content
Article
Effect of Neural Network on Reduction of Noise for Edge Detection
Proceedings of the ASME 2020 Dynamic Systems and Control Conference
  • Diane Peters, Kettering University
  • Enqi Zhang
  • James Z. Zhang
Document Type
Article
Publication Date
1-18-2021
Conference Name
ASME 2020 Dynamic Systems and Control Conference
Abstract

Processing photographic images is important in many applications, among them the development of automated driver assistance systems (ADAS) and autonomous vehicles. Many techniques are used for processing images, including neural networks, other types of machine learning, and edge detection. One common issue with processing these photos is the presence of noise, whether caused by the camera itself or by physical conditions (e.g., weather conditions or dirt on road signs). In this paper, a neural network is used for noise reduction to improve edge detection results and tested with two kinds of noise, Gaussian and salt & pepper noise, and three different edge detection algorithms, Canny, Sobel, and Zhang. Results showed that the noise reduction process was effective in improving performance of the edge detection process, with the exception of conditions where the noise was originally very minimal.

Comments

DSCC2020-24519

Rights Statement

© 2020 by ASME

DOI
10.1115/DSCC2020-3230
Citation Information
Diane Peters, Enqi Zhang and James Z. Zhang. "Effect of Neural Network on Reduction of Noise for Edge Detection" Proceedings of the ASME 2020 Dynamic Systems and Control Conference (2021)
Available at: http://works.bepress.com/diane-peters/68/