Can Boosting with SVM as Week Learners Help?

04/18/2016
by   Dinesh Govindaraj, et al.
0

Object recognition in images involves identifying objects with partial occlusions, viewpoint changes, varying illumination, cluttered backgrounds. Recent work in object recognition uses machine learning techniques SVM-KNN, Local Ensemble Kernel Learning, Multiple Kernel Learning. In this paper, we want to utilize SVM as week learners in AdaBoost. Experiments are done with classifiers like near- est neighbor, k-nearest neighbor, Support vector machines, Local learning(SVM- KNN) and AdaBoost. Models use Scale-Invariant descriptors and Pyramid his- togram of gradient descriptors. AdaBoost is trained with set of week classifier as SVMs, each with kernel distance function on different descriptors. Results shows AdaBoost with SVM outperform other methods for Object Categorization dataset.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/19/2013

Random Binary Mappings for Kernel Learning and Efficient SVM

Support Vector Machines (SVMs) are powerful learners that have led to st...
research
01/04/2014

From Kernel Machines to Ensemble Learning

Ensemble methods such as boosting combine multiple learners to obtain be...
research
07/23/2015

Fourier descriptors based on the structure of the human primary visual cortex with applications to object recognition

In this paper we propose a supervised object recognition method using ne...
research
05/01/2013

An Adaptive Descriptor Design for Object Recognition in the Wild

Digital images nowadays have various styles of appearance, in the aspect...
research
01/23/2012

A metric learning perspective of SVM: on the relation of SVM and LMNN

Support Vector Machines, SVMs, and the Large Margin Nearest Neighbor alg...
research
04/12/2016

Thesis: Multiple Kernel Learning for Object Categorization

Object Categorization is a challenging problem, especially when the imag...
research
06/17/2018

Comparative survey of visual object classifiers

Classification of Visual Object Classes represents one of the most elabo...

Please sign up or login with your details

Forgot password? Click here to reset