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ENTITY Erich-Mühsam-Gesellschaft

Erich-Mühsam-Gesellschaft

PulseAugur coverage of Erich-Mühsam-Gesellschaft — every cluster mentioning Erich-Mühsam-Gesellschaft across labs, papers, and developer communities, ranked by signal.

Total · 30d
7
7 over 90d
Releases · 30d
0
0 over 90d
Papers · 30d
7
7 over 90d
TIER MIX · 90D
RECENT · PAGE 1/1 · 7 TOTAL
  1. RESEARCH · CL_22392 ·

    New models and datasets advance egocentric hand pose forecasting

    Researchers have introduced EggHand, a new multimodal foundation model designed for egocentric hand pose forecasting from video. This model integrates semantic reasoning with dynamic motion modeling, utilizing a Vision-…

  2. RESEARCH · CL_18360 ·

    AEMG framework enables generalizable action representations from EMG signals

    Researchers have developed Any Electromyography (AEMG), a novel self-supervised representation learning framework designed to improve the generalization of electromyography (EMG) signals across different subjects, devic…

  3. RESEARCH · CL_20481 ·

    AI decodes driver behavior and auditory signals using advanced machine learning

    Researchers have developed a new framework for classifying driver behavior using a combination of physiological signals like EEG, EMG, and GSR. The system employs SHAP-based feature selection to identify the most predic…

  4. TOOL · CL_16229 ·

    NAPS model fuses heterogeneous physiological signals using attention for sleep staging

    Researchers have developed NAPS, a novel neural module designed to fuse heterogeneous physiological signals for more robust machine learning representations. This module employs a tri-axial attention mechanism and dimen…

  5. RESEARCH · CL_07006 ·

    AI learns muscle-driven control for realistic piano playing

    Researchers have developed a novel data-driven method for controlling physics-based, muscle-driven hands to play piano with remarkable dexterity. Their hierarchical approach combines high-frequency muscle control with l…

  6. RESEARCH · CL_06325 ·

    BandRouteNet neural network offers adaptive EEG artifact removal

    Researchers have developed BandRouteNet, a novel neural network designed to remove artifacts from electroencephalography (EEG) signals. This adaptive, frequency-aware model processes EEG data in specific frequency bands…

  7. RESEARCH · CL_05068 ·

    Researchers develop new AI model for decoding high-dimensional finger motion from EMG signals

    Researchers have developed a new framework for decoding high-dimensional finger motion from electromyography (EMG) signals using consumer-grade hardware. This system combines an EMG armband and a webcam to collect a new…