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Transfer Learning based on Adaboost for Feature Selection from Multiple ConvNet Layer Features

다중 신경망 레이어에서 특징점을 선택하기 위한 전이 학습 기반의 AdaBoost 기법

  • Alikhanov, Jumabek (Dept. of Computer Science and Information Engineering, Inha University) ;
  • Ga, Myeong Hyeon (Dept. of Computer Science and Information Engineering, Inha University) ;
  • Ko, Seunghyun (Dept. of Computer Science and Information Engineering, Inha University) ;
  • Jo, Geun-Sik (Dept. of Computer Science and Information Engineering, Inha University)
  • 주마벡 (인하대학교 컴퓨터정보공학과) ;
  • 가명현 (인하대학교 컴퓨터정보공학과) ;
  • 고승현 (인하대학교 컴퓨터정보공학과) ;
  • 조근식 (인하대학교 컴퓨터정보공학과)
  • Published : 2016.04.29

Abstract

Convolutional Networks (ConvNets) are powerful models that learn hierarchies of visual features, which could also be used to obtain image representations for transfer learning. The basic pipeline for transfer learning is to first train a ConvNet on a large dataset (source task) and then use feed-forward units activation of the trained ConvNet as image representation for smaller datasets (target task). Our key contribution is to demonstrate superior performance of multiple ConvNet layer features over single ConvNet layer features. Combining multiple ConvNet layer features will result in more complex feature space with some features being repetitive. This requires some form of feature selection. We use AdaBoost with single stumps to implicitly select only distinct features that are useful towards classification from concatenated ConvNet features. Experimental results show that using multiple ConvNet layer activation features instead of single ConvNet layer features consistently will produce superior performance. Improvements becomes significant as we increase the distance between source task and the target task.

Keywords

Acknowledgement

Supported by : National Research Foundation of Korea(NRF)