Forearm Gesture Dataset: Gesture Recognition under Different Arm Postures and Force Levels
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https://figshare.com/articles/dataset/Forearm_Gesture_Dataset_Gesture_Recognition_under_Different_Arm_Postures_and_Force_Levels/23850366/1
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<sub>We present a forearm gesture dataset named "</sub><sub>FEMG-VPF</sub><sub>", comprising simultaneously recorded high-density sEMG, sparse multi-channel sEMG, and Euler angle signals of the forearm muscles. High-density sEMG signals were recorded with a 64-channel high-density grid as well as sparse 8-channel sEMG and 3-channel Euler angle signals were recorded with a Myo armband. Specifically, 28 healthy subjects performed 38 hand gestures under two distinct forearm states: 1) the upper arm naturally drooping with the forearm parallel to the ground, and 2) the upper arm naturally drooping with the forearm at a 45-degree angle to the ground. Each arm posture incorporates one resting gesture, 15 finger movements, and 3 grasping gestures. The finger movements encompassed in the database include single-finger movement, double-finger movement, triple-finger movement, and full-hand movements. The grasping gestures incorporate actions grasping cylindrical objects (i.e., mineral water bottles), planar objects (i.e., books), and spherical objects (i.e., tennis balls), respectively. Each gesture was performed in 6 repeated trials, namely four high-force trials and two low-force trials.</sub>
提供机构:
figshare
创建时间:
2023-08-07
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