We consider the detection of activities from non-cooperating
individuals with features obtained on the radio frequency channel. Since
environmental changes impact the transmission channel between devices, the
detection of this alteration can be used to classify environmental situations.
We identify relevant features to detect activities of non-actively transmitting
subjects. In particular, we distinguish with high accuracy an empty environment
or a walking, lying, crawling or standing person, in case-studies of an active,
device-free activity recognition system with software defined radios. We
distinguish between two cases in which the transmitter is either under the
control of the system or ambient. For activity detection the application of
one-stage and two-stage classifiers is considered. Apart from the
discrimination of the above activities, we can show that a detected activity
can also be localized simultaneously within an area of less than 1 meter
radius.
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