scholarly journals Characterizing the transient electrocardiographic signature of ischemic stress using Laplacian Eigenmaps for dimensionality reduction

2020 ◽  
Vol 127 ◽  
pp. 104059
Author(s):  
W.W. Good ◽  
B. Erem ◽  
B. Zenger ◽  
J. Coll-Font ◽  
J.A. Bergquist ◽  
...  
2018 ◽  
Vol 51 (6) ◽  
pp. S116-S120 ◽  
Author(s):  
Wilson W. Good ◽  
Burak Erem ◽  
Brian Zenger ◽  
Jaume Coll-Font ◽  
Dana H. Brooks ◽  
...  

2020 ◽  
Author(s):  
Elnaz Lashgari ◽  
Uri Maoz

AbstractElectromyography (EMG) is a simple, non-invasive, and cost-effective technology for sensing muscle activity. However, EMG is also noisy, complex, and high-dimensional. It has nevertheless been widely used in a host of human-machine-interface applications (electrical wheelchairs, virtual computer mice, prosthesis, robotic fingers, etc.) and in particular to measure reaching and grasping motions of the human hand. Here, we developd a more automated pipeline to predict object weight in a reach-and-grasp task from an open dataset relying only on EMG data. In that we shifted the focus from manual feature-engineering to automated feature-extraction by using raw (filtered) EMG signals and thus letting the algorithms select the features. We further compared intrinsic EMG features, derived from several dimensionality-reduction methods, and then ran some classification algorithms on these low-dimensional representations. We found that the Laplacian Eigenmap algorithm generally outperformed other dimensionality-reduction methods. What is more, optimal classification accuracy was achieved using a combination of Laplacian Eigenmaps (simple-minded) and k-Nearest Neighbors (88% for 3-way classification). Our results, using EMG alone, are comparable to others in the literature that used EMG and EEG together. They also demonstrate the usefulness of dimensionality reduction when classifying movement based on EMG signals and more generally the usefulness of EMG for movement classification.


2018 ◽  
Vol 10 (2) ◽  
pp. 397-411 ◽  
Author(s):  
Minghua Ma ◽  
Tingquan Deng ◽  
Ning Wang ◽  
Yanmei Chen

As a member of many dimensionalityreduction algorithms, manifold learning is the hotspot ofrecent dimensionality reduction algorithm. Despite it isgood at retaining the original space structure, there is nodenying that its effect of classifying still has room forimprovement. Based on Laplacian Eigenmap, which is oneof the manifold learning algorithm, this paper committed tooptimize the algorithm combined with a semi-supervisedlearning ideas, which can improve the recognition rate.Finally, the better method of two forms is tested in thesurface electromyography system and plant leafidentification system. The experimental results show thatthis semi-supervised method does well in classifying.


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