THESIS
2013
xi, 49 pages : illustrations ; 30 cm
Abstract
The world population is in the midst of a unique and fast process of aging. Fall, which
is one of the major health threats and obstacles to independent living of elders, will aggravate
the global pressure in elders' health care and injury rescue. Thus, automatic fall
detection is highly in need. Current proposed fall detection systems either need hardware
installation or disrupt people's daily life. These limitations make it hard to widely deploy
fall detection systems in residential settings. This work aims to investigate if automatic
fall detection can be achieved without any equipped and carried devices by using currently
commercial wireless products. Firstly, we analyze the wireless signal propagation model
considering human activities influence. We then propose a novel and...[
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The world population is in the midst of a unique and fast process of aging. Fall, which
is one of the major health threats and obstacles to independent living of elders, will aggravate
the global pressure in elders' health care and injury rescue. Thus, automatic fall
detection is highly in need. Current proposed fall detection systems either need hardware
installation or disrupt people's daily life. These limitations make it hard to widely deploy
fall detection systems in residential settings. This work aims to investigate if automatic
fall detection can be achieved without any equipped and carried devices by using currently
commercial wireless products. Firstly, we analyze the wireless signal propagation model
considering human activities influence. We then propose a novel and truly unobtrusive
detection method based on the advanced wireless technologies, which we call as WiFall.
WiFall employs the time variability and special diversity of Channel State Information
(CSI) as the indicator of human activities. As CSI is readily available in prevalent in-use
wireless infrastructures, WiFall withdraws the need for hardware modification, environmental
setup and worn or taken devices. We implement WiFall on laptops equipped with
commercial 802.11n NICs. Two typical indoor scenarios and several layout schemes are
examined. As demonstrated by the experimental results, WiFall yielded 87% detection
precision with false alarm rate of 18% in average.
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