The
availability of “always-on” communications has tremendous implications for how
people interact socially. In particular, sociologists are interested in the
question if such pervasive access increases or decreases face-to-face
interactions. Unlike triangulation which seeks to precisely define position,
the question of face-to-face interaction reduces to one of proximity, i.e., are
the individuals within a certain distance? Moreover, the problem of proximity
estimation is complicated by the fact that the measurement must be quite
precise (1-1.5 m) and can cover a wide variety of environments. Existing
approaches such as GPS and Wi-Fi triangulation are insufficient to meet the
requirements of accuracy and flexibility. In contrast, Bluetooth, which is
commonly available on most smart phones, provides a compelling alternative for
proximity estimation. In this paper, we demonstrate through experimental
studies the efficacy of Bluetooth for this exact purpose. We propose a
proximity estimation model to determine the distance based on the RSSI values
of Bluetooth and light sensor data in different environments. We present several
real world scenarios and explore Bluetooth proximity estimation on Android with
respect to accuracy and power consumption.
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