摘要 |
A sequence layer in a machine-learning engine configured to learn from the observations of a computer vision engine. In one embodiment, the machine-learning engine uses the voting experts to segment adaptive resonance theory (ART) network label sequences for different objects observed in a scene. The sequence layer may be configured to observe the ART label sequences and incrementally build, update, and trim, and reorganize an ngram trie for those label sequences. The sequence layer computes the entropies for the nodes in the ngram trie and determines a sliding window length and vote count parameters. Once determined, the sequence layer may segment newly observed sequences to estimate the primitive events observed in the scene as well as issue alerts for inter-sequence and intra-sequence anomalies. |
申请人 |
BEHAVIORAL RECOGNITION SYSTEMS, INC.;COBB, WESLEY KENNETH;BLYTHE, BOBBY ERNEST;FRIEDLANDER, DAVID SAMUEL;SAITWAL, KISHOR ADINATH;XU, GANG |
发明人 |
COBB, WESLEY KENNETH;BLYTHE, BOBBY ERNEST;FRIEDLANDER, DAVID SAMUEL;SAITWAL, KISHOR ADINATH;XU, GANG |