Leveraging Smartphone Sensors for Detecting Abnormal Gait for Smart
Wearable Mobile Technologies
- URL: http://arxiv.org/abs/2208.01876v1
- Date: Wed, 3 Aug 2022 07:00:16 GMT
- Title: Leveraging Smartphone Sensors for Detecting Abnormal Gait for Smart
Wearable Mobile Technologies
- Authors: Md Shahriar Tasjid, Ahmed Al Marouf
- Abstract summary: When a person walks, there is a pattern in it, and it is known as gait.
We can analyze this gait in different ways, like using video captured by the surveillance cameras or depth image cameras in the lab environment.
We can track down their gait using sensors of these intelligent wearable devices.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Walking is one of the most common modes of terrestrial locomotion for humans.
Walking is essential for humans to perform most kinds of daily activities. When
a person walks, there is a pattern in it, and it is known as gait. Gait
analysis is used in sports and healthcare. We can analyze this gait in
different ways, like using video captured by the surveillance cameras or depth
image cameras in the lab environment. It also can be recognized by wearable
sensors. e.g., accelerometer, force sensors, gyroscope, flexible goniometer,
magneto resistive sensors, electromagnetic tracking system, force sensors, and
electromyography (EMG). Analysis through these sensors required a lab
condition, or users must wear these sensors. For detecting abnormality in gait
action of a human, we need to incorporate the sensors separately. We can know
about one's health condition by abnormal human gait after detecting it.
Understanding a regular gait vs. abnormal gait may give insights to the health
condition of the subject using the smart wearable technologies. Therefore, in
this paper, we proposed a way to analyze abnormal human gait through smartphone
sensors. Though smart devices like smartphones and smartwatches are used by
most of the person nowadays. So, we can track down their gait using sensors of
these intelligent wearable devices.
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