发明名称 Identifying anomalous object types during classification
摘要 Techniques are disclosed for identifying anomaly object types during classification of foreground objects extracted from image data. A self-organizing map and adaptive resonance theory (SOM-ART) network is used to discover object type clusters and classify objects depicted in the image data based on pixel-level micro-features that are extracted from the image data. Importantly, the discovery of the object type clusters is unsupervised, i.e., performed independent of any training data that defines particular objects, allowing a behavior-recognition system to forgo a training phase and for object classification to proceed without being constrained by specific object definitions. The SOM-ART network is adaptive and able to learn while discovering the object type clusters and classifying objects and identifying anomaly object types.
申请公布号 US8548198(B2) 申请公布日期 2013.10.01
申请号 US201213622281 申请日期 2012.09.18
申请人 BEHAVIORAL RECOGNITION SYSTEMS, INC. 发明人 COBB WESLEY KENNETH;FRIEDLANDER DAVID;GOTTUMUKKAL RAJKIRAN KUMAR;SEOW MING-JUNG;XU GANG
分类号 G06K9/00;G01V3/00 主分类号 G06K9/00
代理机构 代理人
主权项
地址