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Autori principali: Salter, Sasha, Warren, Richard, Schlager, Collin, Spurr, Adrian, Han, Shangchen, Bhasin, Rohin, Cai, Yujun, Walkington, Peter, Bolarinwa, Anuoluwapo, Wang, Robert, Danielson, Nathan, Merel, Josh, Pnevmatikakis, Eftychios, Marshall, Jesse
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2412.02725
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author Salter, Sasha
Warren, Richard
Schlager, Collin
Spurr, Adrian
Han, Shangchen
Bhasin, Rohin
Cai, Yujun
Walkington, Peter
Bolarinwa, Anuoluwapo
Wang, Robert
Danielson, Nathan
Merel, Josh
Pnevmatikakis, Eftychios
Marshall, Jesse
author_facet Salter, Sasha
Warren, Richard
Schlager, Collin
Spurr, Adrian
Han, Shangchen
Bhasin, Rohin
Cai, Yujun
Walkington, Peter
Bolarinwa, Anuoluwapo
Wang, Robert
Danielson, Nathan
Merel, Josh
Pnevmatikakis, Eftychios
Marshall, Jesse
contents Hands are the primary means through which humans interact with the world. Reliable and always-available hand pose inference could yield new and intuitive control schemes for human-computer interactions, particularly in virtual and augmented reality. Computer vision is effective but requires one or multiple cameras and can struggle with occlusions, limited field of view, and poor lighting. Wearable wrist-based surface electromyography (sEMG) presents a promising alternative as an always-available modality sensing muscle activities that drive hand motion. However, sEMG signals are strongly dependent on user anatomy and sensor placement, and existing sEMG models have required hundreds of users and device placements to effectively generalize. To facilitate progress on sEMG pose inference, we introduce the emg2pose benchmark, the largest publicly available dataset of high-quality hand pose labels and wrist sEMG recordings. emg2pose contains 2kHz, 16 channel sEMG and pose labels from a 26-camera motion capture rig for 193 users, 370 hours, and 29 stages with diverse gestures - a scale comparable to vision-based hand pose datasets. We provide competitive baselines and challenging tasks evaluating real-world generalization scenarios: held-out users, sensor placements, and stages. emg2pose provides the machine learning community a platform for exploring complex generalization problems, holding potential to significantly enhance the development of sEMG-based human-computer interactions.
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id arxiv_https___arxiv_org_abs_2412_02725
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle emg2pose: A Large and Diverse Benchmark for Surface Electromyographic Hand Pose Estimation
Salter, Sasha
Warren, Richard
Schlager, Collin
Spurr, Adrian
Han, Shangchen
Bhasin, Rohin
Cai, Yujun
Walkington, Peter
Bolarinwa, Anuoluwapo
Wang, Robert
Danielson, Nathan
Merel, Josh
Pnevmatikakis, Eftychios
Marshall, Jesse
Computer Vision and Pattern Recognition
Human-Computer Interaction
Machine Learning
Hands are the primary means through which humans interact with the world. Reliable and always-available hand pose inference could yield new and intuitive control schemes for human-computer interactions, particularly in virtual and augmented reality. Computer vision is effective but requires one or multiple cameras and can struggle with occlusions, limited field of view, and poor lighting. Wearable wrist-based surface electromyography (sEMG) presents a promising alternative as an always-available modality sensing muscle activities that drive hand motion. However, sEMG signals are strongly dependent on user anatomy and sensor placement, and existing sEMG models have required hundreds of users and device placements to effectively generalize. To facilitate progress on sEMG pose inference, we introduce the emg2pose benchmark, the largest publicly available dataset of high-quality hand pose labels and wrist sEMG recordings. emg2pose contains 2kHz, 16 channel sEMG and pose labels from a 26-camera motion capture rig for 193 users, 370 hours, and 29 stages with diverse gestures - a scale comparable to vision-based hand pose datasets. We provide competitive baselines and challenging tasks evaluating real-world generalization scenarios: held-out users, sensor placements, and stages. emg2pose provides the machine learning community a platform for exploring complex generalization problems, holding potential to significantly enhance the development of sEMG-based human-computer interactions.
title emg2pose: A Large and Diverse Benchmark for Surface Electromyographic Hand Pose Estimation
topic Computer Vision and Pattern Recognition
Human-Computer Interaction
Machine Learning
url https://arxiv.org/abs/2412.02725