Learning generative visual models from few training examples: An incremental Bayesian approach tested on 101 object categories

被引:1862
|
作者
Li Fei-Fei
Fergus, Rob
Perona, Pietro
机构
[1] Princeton Univ, Princeton, NJ 08540 USA
[2] Univ Oxford, Oxford OX1 3PJ, England
[3] CALTECH, Pasadena, CA 91125 USA
关键词
object recognition; categorization; generative model; incremental learning; Bayesian model;
D O I
10.1016/j.cviu.2005.09.012
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Current computational approaches to learning visual object categories require thousands of training images, are slow, cannot learn in an incremental manner and cannot incorporate prior information into the learning process. In addition, no algorithm presented in the literature has been tested on more than a handful of object categories. We present all method for learning object categories from just a few training images. It is quick and it uses prior information in a principled way. We test it on a dataset composed of images of objects belonging to 101 widely varied categories. Our proposed method is based on making use of prior information, assembled from (unrelated) object categories which were previously learnt. A generative probabilistic model is used, which represents the shape and appearance of a constellation of features belonging to the object. The parameters of the model are learnt incrementally in a Bayesian manner. Our incremental algorithm is compared experimentally to an earlier batch Bayesian algorithm, as well as to one based on maximum likelihood. The incremental and batch versions have comparable classification performance on small training sets, but incremental learning is significantly faster, making real-time learning feasible. Both Bayesian methods outperform maximum likelihood on small training sets. (C) 2006 Elsevier Inc. All rights reserved.
引用
收藏
页码:59 / 70
页数:12
相关论文
共 7 条
  • [1] Learning Generative Models of Object Parts from A Few Positive Examples
    Riabchenko, Ekaterina
    Kamarainen, Joni-Kristian
    Chen, Ke
    2014 22ND INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR), 2014, : 2287 - 2292
  • [2] Learning object models from few examples
    Misra, Ishan
    Wang, Yuxiong
    Hebert, Martial
    UNMANNED SYSTEMS TECHNOLOGY XVIII, 2016, 9837
  • [3] Combining Generative and Discriminative Models for Classifying Social Images from 101 Object Categories
    Ballan, Lamberto
    Bertini, Marco
    Del Bimbo, Alberto
    Seram, Andrea M.
    Serra, Giuseppe
    Zaccone, Benito F.
    2012 21ST INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR 2012), 2012, : 1731 - 1734
  • [4] The Variational Homoencoder: Learning to learn high capacity generative models from few examples
    Hewitt, Luke B.
    Nye, Maxwell, I
    Gane, Andreea
    Jaakkola, Tommi
    Tenenbaum, Joshua B.
    UNCERTAINTY IN ARTIFICIAL INTELLIGENCE, 2018, : 988 - 997
  • [5] From Label Maps to Generative Shape Models: A Variational Bayesian Learning Approach
    Elhabian, Shireen Y.
    Whitaker, Ross T.
    INFORMATION PROCESSING IN MEDICAL IMAGING (IPMI 2017), 2017, 10265 : 93 - 105
  • [6] Leveraging Prior Concept Learning Improves Generalization From Few Examples in Computational Models of Human Object Recognition
    Rule, Joshua S.
    Riesenhuber, Maximilian
    FRONTIERS IN COMPUTATIONAL NEUROSCIENCE, 2021, 14
  • [7] A Generative Framework for Multimodal Learning of Spatial Concepts and Object Categories: An Unsupervised Part-of-Speech Tagging and 3D Visual Perception Based Approach
    Aly, Amir
    Taniguchi, Akira
    Taniguchi, Tadahiro
    2017 THE SEVENTH JOINT IEEE INTERNATIONAL CONFERENCE ON DEVELOPMENT AND LEARNING AND EPIGENETIC ROBOTICS (ICDL-EPIROB), 2017, : 376 - 383