Spatial Stimuli Gradient Sketch Model

02/15/2015
by   Joshin John Mathew, et al.
0

The inability of automated edge detection methods inspired from primal sketch models to accurately calculate object edges under the influence of pixel noise is an open problem. Extending the principles of image perception i.e. Weber-Fechner law, and Sheperd similarity law, we propose a new edge detection method and formulation that use perceived brightness and neighbourhood similarity calculations in the determination of robust object edges. The robustness of the detected edges is benchmark against Sobel, SIS, Kirsch, and Prewitt edge detection methods in an example face recognition problem showing statistically significant improvement in recognition accuracy and pixel noise tolerance.

READ FULL TEXT

page 2

page 3

research
07/19/2019

Some Polycubes Have No Edge-Unzipping

It is unknown whether or not every polycube has an edge-unfolding. A pol...
research
11/06/2019

Spatial Feature Extraction in Airborne Hyperspectral Images Using Local Spectral Similarity

Local spectral similarity (LSS) algorithm has been developed for detecti...
research
07/26/2023

PNT-Edge: Towards Robust Edge Detection with Noisy Labels by Learning Pixel-level Noise Transitions

Relying on large-scale training data with pixel-level labels, previous e...
research
03/19/2015

Edge Detection: A Collection of Pixel based Approach for Colored Images

The existing traditional edge detection algorithms process a single pixe...
research
04/30/2014

Gabor Filter and Rough Clustering Based Edge Detection

This paper introduces an efficient edge detection method based on Gabor ...
research
03/19/2015

An approach to improving edge detection for facial and remotely sensed images using vector order statistics

This paper presents an improved edge detection algorithm for facial and ...
research
03/22/2006

Matching Edges in Images ; Application to Face Recognition

This communication describes a representation of images as a set of edge...

Please sign up or login with your details

Forgot password? Click here to reset