A novel hybrid edge detection algorithm based on wavelet thresholding and ICA
Abstract
We propose a robust edge detection method
based on ICA-domain shrinkage1 (independent component
analysis). It is known that most basis functions extracted
from natural images by ICA are sparse and similar to
localized and oriented receptive fields, and in the proposed
edge detection method, a target image is first transformed
by ICA basis functions and then the edges are detected or
reconstructed with sparse components. Furthermore, by
applying a shrinkage algorithm to filter out the
components of noise in ICA-domain, we can readily obtain
the sparse components of the original image, resulting in a
kind of robust edge detection even for a noisy image with a
very low SN ratio. The efficiency of the proposed method is
demonstrated by experiments with some natural images.
Collections
- Conference Papers [2600]