A Theory of Local Matching: SIFT and Beyond

01/19/2016
by   Hossein Mobahi, et al.
0

Why has SIFT been so successful? Why its extension, DSP-SIFT, can further improve SIFT? Is there a theory that can explain both? How can such theory benefit real applications? Can it suggest new algorithms with reduced computational complexity or new descriptors with better accuracy for matching? We construct a general theory of local descriptors for visual matching. Our theory relies on concepts in energy minimization and heat diffusion. We show that SIFT and DSP-SIFT approximate the solution the theory suggests. In particular, DSP-SIFT gives a better approximation to the theoretical solution; justifying why DSP-SIFT outperforms SIFT. Using the developed theory, we derive new descriptors that have fewer parameters and are potentially better in handling affine deformations.

READ FULL TEXT

page 4

page 5

research
01/19/2016

PN-Net: Conjoined Triple Deep Network for Learning Local Image Descriptors

In this paper we propose a new approach for learning local descriptors f...
research
04/04/2013

Spectral Descriptors for Graph Matching

In this paper, we consider the weighted graph matching problem. Recently...
research
04/16/2022

Efficient Linear Attention for Fast and Accurate Keypoint Matching

Recently Transformers have provided state-of-the-art performance in spar...
research
12/23/2021

NinjaDesc: Content-Concealing Visual Descriptors via Adversarial Learning

In the light of recent analyses on privacy-concerning scene revelation f...
research
12/30/2014

Domain-Size Pooling in Local Descriptors: DSP-SIFT

We introduce a simple modification of local image descriptors, such as S...
research
04/19/2022

OpenGlue: Open Source Graph Neural Net Based Pipeline for Image Matching

We present OpenGlue: a free open-source framework for image matching, th...
research
12/04/2021

3rd Place: A Global and Local Dual Retrieval Solution to Facebook AI Image Similarity Challenge

As a basic task of computer vision, image similarity retrieval is facing...

Please sign up or login with your details

Forgot password? Click here to reset