Abstract:
In the wireless perception of events, Radio Sensing (RS) has been positioned
as an alternative technology that does not have major limitations under
several environmental conditions or lack of line of sight. However, there are
techniques and approaches to the RS that have not yet been widely explored
and that can improve its sensing capabilities for characterization and recognition
applications. Furthermore, within the new paradigm of joint radio
sensing and communications (JRSAC), it is a priority to find alternatives
that facilitate the integration of these two technologies. In this dissertation,
I present an RS platform based on the analysis of Doppler signatures
of a radio-frequency continuous wave signal. Specifically, the platform was
used for two relevant wireless perception applications: the detection of human
falls and the detection of approaching vehicles. In fall detection, I
present a systematic analysis of the influence of antenna orientation on RS
systems and how it directly affects classification performance. For this, I
compared the performance of two classification algorithms based on deep
learning (DL): a long-short-term memory (LSTM) network and a convolutional
neural network (CNN). Both models were tested using data collected
from experiments with different antenna orientations and activities.
The highest accuracy rates achieved were 92.10% for the implemented algorithms.
This represents that the majority of events were correctly identified.
The results obtained contribute to improving the design of the sensing platforms
and increase the accuracy to identify fall events. On the other hand,
the same platform was used for the detection of approaching vehicles in a
vehicle-to-vehicle dispersion scenario. In this case, the feasibility of using an
alternative sensing approach where a vehicle receives the signal transmitted
by a second vehicle to characterize the event was verified. Combining this
approach with the DL models, an accuracy of 98.60% detecting vehicles was
achieved with the LSTM and 94.50% with the CNN. The high accuracy
rates demonstrate the potential of Doppler signatures and DL algorithms in
detecting oncoming vehicles.