Indexed by:Conference Paper
Date of Publication:2016-09-28
Included Journals:CPCI-S、EI
Volume:9864
Page Number:45-55
Key Words:Body sensor networks; Motion recognition; Phase segmentation; Swimming
Abstract:In order to effectively improve training quality of the swimmers, the activity monitoring technology based on body sensor networks (BSN) may be qualified for this task. In this paper, a monitoring system (SwimSense) for human swimming training locomotion based on BSN is established. SwimSense includes six measurement nodes, which can monitor the swimming strokes of several swimmers synchronously. The receiving node is connected with personal computer (PC) through USB cable, which allows the collected motion data can be transmitted to PC through wireless radio frequency communication, and the collected data can be used to motion analysis. The preliminary monitoring system mainly has two functions, at the first place, different swimming strokes may be recognized by using the monitoring system, and the selective classifier is Hidden Markov Model, and then according to the results of classification and the characters of different swimming strokes, phase segmentation of each swimming stroke is executed by using Support Vector Machine for the detailed research in the future.
Associate Professor
Supervisor of Master's Candidates
Title : 体育与健康学院体育人文与民族传统体育教工党支部书记
Gender:Male
Alma Mater:大连理工大学
Degree:Master's Degree
School/Department:体育与健康学院
Discipline:Human Movement Science
Business Address:刘长春体育馆东06
Browse on mobile
Open Time:..
The Last Update Time:..