Maximum Margin Vector Correlation Filter

04/24/2014
by   Vishnu Naresh Boddeti, et al.
0

Correlation Filters (CFs) are a class of classifiers which are designed for accurate pattern localization. Traditionally CFs have been used with scalar features only, which limits their ability to be used with vector feature representations like Gabor filter banks, SIFT, HOG, etc. In this paper we present a new CF named Maximum Margin Vector Correlation Filter (MMVCF) which extends the traditional CF designs to vector features. MMVCF further combines the generalization capability of large margin based classifiers like Support Vector Machines (SVMs) and the localization properties of CFs for better robustness to outliers. We demonstrate the efficacy of MMVCF for object detection and landmark localization on a variety of databases and demonstrate that MMVCF consistently shows improved pattern localization capability in comparison to SVMs.

READ FULL TEXT

page 6

page 7

research
02/26/2019

QLMC-HD: Quasi Large Margin Classifier based on Hyperdisk

In the area of data classification, the different classifiers have been ...
research
03/29/2020

On the Precise Error Analysis of Support Vector Machines

This paper investigates the asymptotic behavior of the soft-margin and h...
research
01/16/2013

An Uncertainty Framework for Classification

We define a generalized likelihood function based on uncertainty measure...
research
02/26/2023

Autoencoders as Pattern Filters

We discuss a simple approach to transform autoencoders into "pattern fil...
research
11/10/2014

Zero-Aliasing Correlation Filters for Object Recognition

Correlation filters (CFs) are a class of classifiers that are attractive...
research
08/03/2015

Integrated Inference and Learning of Neural Factors in Structural Support Vector Machines

Tackling pattern recognition problems in areas such as computer vision, ...

Please sign up or login with your details

Forgot password? Click here to reset