Inspired by the human immune system, and in particular the negative selection algorithm, we propose a learning mechanism that enables the detection of abnormal activities. Three detectors for detecting abnormal activity are generated using negative selection. Tracks gathered by people’s movements in a room are used for experimentation and results have shown that the classifier is able to discriminate abnormal from normal activities in terms of both trajectory and time spent at a location.
History
Journal
GESTS international transactions on computer science and engineering
Volume
2
Pagination
191 - 199
Publisher
Global Engineering, Science, and Technology Society