Volume 2, Number 1, Article 5, Pages 66-78 doi:10.1167/2.1.5 http://journalofvision.org/2/1/5/ ISSN 1534-7362
Classification image analysis: Estimation and statistical inference for two-alternative forced-choice experiments
Craig K. Abbey
Dept. of Biomedical Engineering, University of California, Davis, CA, USA
[home] [e-mail]
Miguel P. Eckstein
Department of Psychology, University of California, Santa Barbara, CA, USA
[home] [e-mail]
Abstract

We consider estimation and statistical hypothesis testing on classification images obtained from the two-alternative forced-choice experimental paradigm. We begin with a probabilistic model of task performance for simple forced-choice detection and discrimination tasks. Particular attention is paid to general linear filter models because these models lead to a direct interpretation of the classification image as an estimate of the filter weights. We then describe an estimation procedure for obtaining classification images from observer data. A number of statistical tests are presented for testing various hypotheses from classification images based on some more compact set of features derived from them. As an example of how the methods we describe can be used, we present a case study investigating detection of a Gaussian bump profile.

View full-text

History
Received July 1, 2001; published January 28, 2002
Citation
Abbey, C. K., & Eckstein, M. P. (2002). Classification image analysis: Estimation and statistical inference for two-alternative forced-choice experiments. Journal of Vision, 2(1):5, 66-78, http://journalofvision.org/2/1/5/, doi:10.1167/2.1.5.
Keywords
classification image, linear template, detection, two-alternative forced-choice
Downloads
>1,133 Total; >0.740 /day (DemandFactor)
 
Search
for related articles by these authors
for papers that cite this paper
Get citation






jov