F. A. Andaló,
P. A.V. Miranda,
R. da S. Torres,
A. X. Falcão.
Shape Feature Extraction and Description based on Tensor Scale.
Pattern Recognition 43(1): 26-36 (2010).
Abstract
Tensor scale is a morphometric parameter that unifies the
representation of local structure thickness, orientation, and
anisotropy, which can be used in several computer vision and image
processing tasks. In this article, we exploit this concept for binary
images and propose a shape salience detector and a shape descriptor—Tensor Scale Descriptor with Influence Zones.
It also introduces a robust method to compute tensor scale, using a
graph-based approach—the Image Foresting Transform. Experimental
results are provided, showing the effectiveness of the proposed
methods, when compared to other relevant methods, such as Beam Angle
Statistics and Contour Salience Descriptor, with regard to their use in
content-based image retrieval tasks.
Back
Last updated on Dec 28, 2009.
Disclaimer: This is a personal page, and not an official UNICAMP's
page. Its contents are of entire responsibility of Ricardo Torres.