Title :
Performance assessment through bootstrap
Author :
Cho, Kyujin ; Meer, Peter ; Cabrera, Javier
Author_Institution :
Open Solution Center, Samsung Data Syst., Seoul, South Korea
fDate :
11/1/1997 12:00:00 AM
Abstract :
A new performance evaluation paradigm for computer vision systems is proposed. In real situation, the complexity of the input data and/or of the computational procedure can make traditional error propagation methods infeasible. The new approach exploits a resampling technique recently introduced in statistics, the bootstrap. Distributions for the output variables are obtained by perturbing the nuisance properties of the input, i.e., properties with no relevance for the output under ideal conditions. From these bootstrap distributions, the confidence in the adequacy of the assumptions embedded into the computational procedure for the given input is derived. As an example, the new paradigm is applied to the task of edge detection. The performance of several edge detection methods is compared both for synthetic data and real images. The confidence in the output can be used to obtain an edgemap independent of the gradient magnitude
Keywords :
computer vision; edge detection; software performance evaluation; statistical analysis; bootstrap; computational procedure; computer vision systems; edge detection; edge map; edgemap; input data complexity; performance assessment; performance evaluation paradigm; real images; synthetic data; Computer errors; Computer vision; Distributed computing; Embedded computing; Feature extraction; Helium; Image analysis; Image edge detection; Layout; Statistical distributions;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on