Title :
RIEVL: recursive induction learning in hand gesture recognition
Author :
Zhao, Meide ; Quek, Francis K H ; Wu, Xindong
Author_Institution :
Dept. of Neurosurg., Illinois Univ., Chicago, IL, USA
fDate :
11/1/1998 12:00:00 AM
Abstract :
Presents a recursive inductive learning scheme that is able to acquire hand pose models in the form of disjunctive normal form expressions involving multivalued features. Based on an extended variable-valued logic, our rule-based induction system is able to abstract compact rule sets from any set of feature vectors describing a set of classifications. The rule bases which satisfy the completeness and consistency conditions are induced and refined through five heuristic strategies. A recursive induction learning scheme in the RIEVL algorithm is designed to escape local minima in the solution space. A performance comparison of RIEVL with other inductive algorithms, ID3, NewID, C4.5, CN2, and HCV, is given in the paper. In the experiments with hand gestures, the system produced the disjunctive normal form descriptions of each pose and identified the different hand poses based on the classification rules obtained by the RIEVL algorithm. RIEVL classified 94.4 percent of the gesture images in our testing set correctly, outperforming all other inductive algorithms
Keywords :
feature extraction; gesture recognition; image classification; learning by example; multivalued logic; C4.5; CN2; HCV; ID3; NewID; RIEVL algorithm; classification rules; compact rule sets; completeness; consistency conditions; disjunctive normal form expressions; extended variable-valued logic; feature vectors; hand gesture recognition; hand pose models; multivalued features; recursive induction learning; rule-based induction system; Algorithm design and analysis; Anatomy; Computer vision; Humans; Induction generators; Logic; Machine learning; Machine learning algorithms; Testing; Training data;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on