SIFT Vs SURF: Quantifying the Variation in Transformations

04/25/2015
by   Siddharth Srivastava, et al.
0

This paper studies the robustness of SIFT and SURF against different image transforms (rigid body, similarity, affine and projective) by quantitatively analyzing the variations in the extent of transformations. Previous studies have been comparing the two techniques on absolute transformations rather than the specific amount of deformation caused by the transformation. The paper establishes an exhaustive empirical analysis of such deformations and matching capability of SIFT and SURF with variations in matching parameters and the amount of tolerance. This is helpful in choosing the specific use case for applying these techniques.

READ FULL TEXT

page 1

page 2

research
04/18/2013

Polygon Matching and Indexing Under Affine Transformations

Given a collection {Z_1,Z_2,...,Z_m} of n-sided polygons in the plane an...
research
07/19/2015

A concise parametrisation of affine transformation

Good parametrisations of affine transformations are essential to interpo...
research
04/28/2018

Evaluation of Feature Detector-Descriptor for Real Object Matching under Various Conditions of Ilumination and Affine Transformation

This study attempts to provide explanations, descriptions and evaluation...
research
07/18/2017

DCTM: Discrete-Continuous Transformation Matching for Semantic Flow

Techniques for dense semantic correspondence have provided limited abili...
research
07/21/2023

Automatic Data Augmentation Learning using Bilevel Optimization for Histopathological Images

Training a deep learning model to classify histopathological images is c...
research
04/03/2023

Learning Anchor Transformations for 3D Garment Animation

This paper proposes an anchor-based deformation model, namely AnchorDEF,...
research
09/21/2008

Robust Near-Isometric Matching via Structured Learning of Graphical Models

Models for near-rigid shape matching are typically based on distance-rel...

Please sign up or login with your details

Forgot password? Click here to reset