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Accelerometer‐Based Body Sensor Network (BSN) for Medical Diagnosis Assessment and Training

Ming‐Yih Lee, Kin Fong Lei, Wen‐Yen Lin, Wann‐Yun Shieh, Wen‐Wei Tsai, Simon H. Fu, Chung‐Hsien Kuo

Year
2015
Citations
7

Abstract

Body sensor network (BSN) can provide real-time remote monitoring of the health situation of a particular person. In operation, wearable, miniaturized, and low-power consumption sensors are attached on or implanted in human body for collecting biological signals. In this chapter, the use of accelerometers for BSN for monitoring the body motions is discussed. Recent advances in the computation of motion identification are described including tilting angle, muscle strength, and gait performance and specific computing algorithms, different interpretations of the signal from accelerometers can be formulated. Moreover, several medical diagnosis assessment and training applications are introduced to demonstrate the capability of an accelerometer-based BSN. Furthermore, the concept of using biped humanoid robots to develop the BSN simulation system is discussed. Finally, the BSN simulation system could generate helpful BSN information for evaluating the algorithms' performance in laboratories before the BSN systems are deployed to the human's body.

Keywords

AccelerometerWearable computerComputer scienceIdentification (biology)ComputationHumanoid robotArtificial intelligenceHuman–computer interactionReal-time computingRobot

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