Communications: electrical – Condition responsive indicating system – Specific condition
Reexamination Certificate
2007-12-05
2010-11-23
Previl, Daniel (Department: 2612)
Communications: electrical
Condition responsive indicating system
Specific condition
C340S573300, C340S441000, C340S479000
Reexamination Certificate
active
07839292
ABSTRACT:
Systems and methods are disclosed to predict driving danger by capturing vehicle dynamic parameter, driver physiological data and driver behavior feature; applying a learning algorithm to the features; and predicting driving danger.
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Gong Yihong
Wang Jinjun
Xu Wei
Kolodka Joseph
NEC Laboratories America, Inc.
Previl Daniel
Tran Bao
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