Sign in
Constructing an Optimal Decision Tree for FAST Corner Point Detection
Conference proceeding   Peer reviewed

Constructing an Optimal Decision Tree for FAST Corner Point Detection

Abdulaziz Alkhalid, Igor Chikalov and Mikhail Moshkov
ROUGH SETS AND KNOWLEDGE TECHNOLOGY, Vol.6954, pp.187-194
Lecture Notes in Artificial Intelligence
01/01/2011

Abstract

Computer Science Computer Science, Artificial Intelligence Science & Technology Technology
In this paper, we consider a problem that is originated in computer vision: determining an optimal testing strategy for the corner point detection problem that is a part of FAST algorithm [11,12]. The problem can be formulated as building a decision tree with the minimum average depth for a decision table with all discrete attributes. We experimentally compare performance of an exact algorithm based on dynamic programming and several greedy algorithms that differ in the attribute selection criterion.

Metrics

1 Record Views

Details