Title :
Predicting performance of object recognition
Author :
Boshra, Michael ; Bhanu, Bir
Author_Institution :
AuthenTec Inc., Melbourne, FL, USA
fDate :
9/1/2000 12:00:00 AM
Abstract :
We present a method for predicting fundamental performance of object recognition. We assume that both scene data and model objects are represented by 2D point features and a data/model match is evaluated using a vote-based criterion. The proposed method considers data distortion factors such as uncertainty, occlusion, and clutter, in addition to model similarity. This is unlike previous approaches, which consider only a subset of these factors. Performance is predicted in two stages. In the first stage, the similarity between every pair of model objects is captured by comparing their structures as a function of the relative transformation between them. In the second stage, the similarity information is used along with statistical models of the data-distortion factors to determine an upper bound on the probability of recognition error. This bound is directly used to determine a lower bound on the probability of correct recognition. The validity of the method is experimentally demonstrated using real synthetic aperture radar (SAR) data
Keywords :
clutter; object recognition; probability; statistical analysis; 2D point features; SAR data; clutter; data distortion factors; data/model match; model objects; model similarity; model-based object recognition; occlusion; performance prediction; recognition error probability; relative transformation; scene data; statistical models; uncertainty; vote-based criterion; Clutter; Data mining; Degradation; Feature extraction; Image recognition; Layout; Object recognition; Predictive models; Probability; Uncertainty;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on