Automated Author Profile

Praahas Amin

Current S-Index

6.5

Sum of Dataset Indices for all datasets

Average Dataset Index per Dataset

1.3

Average Dataset Index per dataset

Total Datasets

5

Total datasets for this author

Average FAIR Score

65.4%

Average FAIR Score per dataset

Total Citations

2

Total citations to the author's datasets

Total Mentions

0

Total mentions of the author's datasets

S-Index Interpretation

S-Index Over Time

Cumulative Citations Over Time

Cumulative Mentions Over Time

Datasets

Spectrogram of Surface EMG Data obtained from Myo Armband

The Data consists of the spectrogram of electromyography signals for 1 user. The user performed 5 hand gestures. i.e. Point, Middle Finger Extension, Closed Fist, Pinch, and Rest. The data is acquired using a Thalmic Labs Myo Armband, which has a sampling frequency of 200Hz. The participants were made to hold a gesture for 5s and relax for 3s. 6 gesture samples were acquired in one session. 12 such sessions were conducted for each gesture for each user. This gives us 72 samples for each gesture. The spectrogram was computed for each processing window. The spectrogram information can be used for the classification of hand gestures. The gesture classes are point(0), middle finger extension (1), closed-grip (2), pinch (3), rest (4).This data set can be used for gesture recognition problems.

Authors

  • Praahas Amin
0 Citations0 Mentions65% FAIR0.7 Dataset Index
10.17632/xz38kw7m3d2022

Spectrogram of Surface EMG Data obtained from Myo Armband

The Data consists of the spectrogram of electromyography signals for 1 user. The user performed 5 hand gestures. i.e. Point, Middle Finger Extension, Closed Fist, Pinch, and Rest. The data is acquired using a Thalmic Labs Myo Armband, which has a sampling frequency of 200Hz. The participants were made to hold a gesture for 5s and relax for 3s. 6 gesture samples were acquired in one session. 12 such sessions were conducted for each gesture for each user. This gives us 72 samples for each gesture. The spectrogram was computed for each processing window. The spectrogram information can be used for the classification of hand gestures. The gesture classes are point(0), middle finger extension (1), closed-grip (2), pinch (3), rest (4).This data set can be used for gesture recognition problems.

Authors

  • Praahas Amin
1 Citation0 Mentions65% FAIR1.8 Dataset Index
10.17632/xz38kw7m3d.22022

Spectrogram of Surface EMG Data obtained from Myo Armband

The Data consists of the spectrogram of electromyography signals for 1 user. The user performed 5 hand gestures. i.e. Point, Middle Finger Extension, Closed Fist, Pinch, and Rest. The data is acquired using a Thalmic Labs Myo Armband, which has a sampling frequency of 200Hz. The participants were made to hold a gesture for 5s and relax for 3s. 6 gesture samples were acquired in one session. 12 such sessions were conducted for each gesture for each user. This gives us 72 samples for each gesture. The spectrogram was computed for each processing window. The spectrogram information can be used for the classification of hand gestures. The gesture classes are point(0), middle finger extension (1), closed-grip (2), pinch (3), rest (4).This data set can be used for gesture recognition problems.

Authors

  • Praahas Amin
0 Citations0 Mentions65% FAIR1.4 Dataset Index
10.17632/xz38kw7m3d.12022

EMG Data Set for Machine Learning and Deep Learning Problems

The Data consists of 3 parts. The dataset includes raw EMG data for 2 users. The users performed 5 hand gestures. i.e. Point, Middle Finger Extension, Closed Fist, Pinch, and Rest. The data is acquired using a Thalmic Labs Myo Armband, which has a sampling frequency of 200Hz. The participants were made to hold a gesture for 5s and relax for 3s. 6 gesture samples were acquired in one session. 12 such sessions were conducted for each gesture for each user. This gives us 72 samples for each gesture. Another data set is prepared that represents the Time Domain features extracted for each processing window The gesture windows were identified and Time domain features were extracted for each window. The feature vector for each window is arranged row-wise. Each row represents a processing window and each column in that row represents an extracted Time Domain feature. The Time Domain Features extracted are Integrated EMG (IEMG), Mean Absolute Value (MAV, MAV1 and MAV2), Simple Squared Integral (SSI), Variance (VAR), Root Mean Square (RMS), Waveform Length (WL), Average Amplitude Change (AAC), Absolute Standard Deviation Value Difference (DASDV), Myo Pulse Percentage (MYOP), Log Detector (LOG), Willison Amplitude (WAmp), Slope Sign Change (SSC) and Number of Zero Crossings (ZC) and Amplitude of First Burst (AFB). The last column represents the Gesture Class point(0), middle finger extension (1), closed-grip (2), pinch (3), rest (4).This data set can be used for gesture recognition problems.

Authors

  • Praahas Amin
0 Citations0 Mentions65% FAIR0.7 Dataset Index
10.17632/3r6hynp5xs2022

EMG Data Set for Machine Learning and Deep Learning Problems

The Data consists of 3 parts. The dataset includes raw EMG data for 2 users. The users performed 5 hand gestures. i.e. Point, Middle Finger Extension, Closed Fist, Pinch, and Rest. The data is acquired using a Thalmic Labs Myo Armband, which has a sampling frequency of 200Hz. The participants were made to hold a gesture for 5s and relax for 3s. 6 gesture samples were acquired in one session. 12 such sessions were conducted for each gesture for each user. This gives us 72 samples for each gesture. Another data set is prepared that represents the Time Domain features extracted for each processing window The gesture windows were identified and Time domain features were extracted for each window. The feature vector for each window is arranged row-wise. Each row represents a processing window and each column in that row represents an extracted Time Domain feature. The Time Domain Features extracted are Integrated EMG (IEMG), Mean Absolute Value (MAV, MAV1 and MAV2), Simple Squared Integral (SSI), Variance (VAR), Root Mean Square (RMS), Waveform Length (WL), Average Amplitude Change (AAC), Absolute Standard Deviation Value Difference (DASDV), Myo Pulse Percentage (MYOP), Log Detector (LOG), Willison Amplitude (WAmp), Slope Sign Change (SSC) and Number of Zero Crossings (ZC) and Amplitude of First Burst (AFB). The last column represents the Gesture Class point(0), middle finger extension (1), closed-grip (2), pinch (3), rest (4).This data set can be used for gesture recognition problems.

Authors

  • Praahas Amin
1 Citation0 Mentions65% FAIR1.8 Dataset Index
10.17632/3r6hynp5xs.12022