TY - GEN
T1 - Near real-time data labeling using a depth sensor for EMG based prosthetic arms
AU - Prathap, Geesara
AU - Kumara, Titus Nanda
AU - Ragel, Roshan
PY - 2019
Y1 - 2019
N2 - ![CDATA[Recognizing sEMG (Surface Electromyography) signals belonging to a particular action (e.g., lateral arm raise) automatically is a challenging task as EMG signals themselves have a lot of variations even for the same action due to several factors. To overcome this issue, there should be a proper separation which indicates similar patterns repetitively for a particular action in raw signals. A repetitive pattern is not always matched because the same action can be carried out with different time duration. Thus, a depth sensor (Kinect) was used for pattern identification where three joint angles were recorded continuously which is clearly separable for a particular action while recording sEMG signals. To segment out a repetitive pattern in angle data, MDTW (Moving Dynamic Time Warping) approach is introduced. This technique is allowed to retrieve suspected motion of interest from raw signals. MDTW based on DTW algorithm, but it will be moving through the whole dataset in a pre-defined manner which is capable of picking up almost all the suspected segments inside a given dataset in an optimal way. Elevated bicep curl and lateral arm raise movements are taken as motions of interest to show how the proposed technique can be employed to achieve auto identification and labelling.]]
AB - ![CDATA[Recognizing sEMG (Surface Electromyography) signals belonging to a particular action (e.g., lateral arm raise) automatically is a challenging task as EMG signals themselves have a lot of variations even for the same action due to several factors. To overcome this issue, there should be a proper separation which indicates similar patterns repetitively for a particular action in raw signals. A repetitive pattern is not always matched because the same action can be carried out with different time duration. Thus, a depth sensor (Kinect) was used for pattern identification where three joint angles were recorded continuously which is clearly separable for a particular action while recording sEMG signals. To segment out a repetitive pattern in angle data, MDTW (Moving Dynamic Time Warping) approach is introduced. This technique is allowed to retrieve suspected motion of interest from raw signals. MDTW based on DTW algorithm, but it will be moving through the whole dataset in a pre-defined manner which is capable of picking up almost all the suspected segments inside a given dataset in an optimal way. Elevated bicep curl and lateral arm raise movements are taken as motions of interest to show how the proposed technique can be employed to achieve auto identification and labelling.]]
UR - https://hdl.handle.net/1959.7/uws:61699
U2 - 10.1007/978-3-030-01057-7_25
DO - 10.1007/978-3-030-01057-7_25
M3 - Conference Paper
SN - 9783030010560
SP - 310
EP - 325
BT - Intelligent Systems and Applications: Proceedings of the 2018 Intelligent Systems Conference (IntelliSys), Volume 2, September 6-7, 2018, London, UK
PB - Springer
T2 - SAI Intelligent Systems Conference
Y2 - 5 September 2019
ER -