Communications: electrical – Condition responsive indicating system – Specific condition
Reexamination Certificate
2008-10-02
2011-12-13
Nguyen, Tai T (Department: 2612)
Communications: electrical
Condition responsive indicating system
Specific condition
C340S565000, C340S544000, C340S522000, C340S943000, C356S486000, C356S502000
Reexamination Certificate
active
08077036
ABSTRACT:
A system for detecting and classifying a security breach may include at least one sensor configured to detect seismic vibration from a source, and to generate an output signal that represents the detected seismic vibration. The system may further include a controller that is configured to extract a feature vector from the output signal of the sensor and to measure one or more likelihoods of the extracted feature vector relative to set {bi} (i=1, . . . , imax) of breach classes bi. The controller may be further configured to classify the detected seismic vibration as a security breach belonging to one of the breach classes bi, by choosing a breach class within the set {bi} that has a maximum likelihood.
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Berger Theodore W.
Dibazar Alireza
Park Hyung O.
Yousefi Ali
McDermott Will & Emery LLP
Nguyen Tai T
University of Southern California
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