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Modeling and Similitude01:12

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Scaled modeling is a fundamental technique in engineering, enabling the study of large and complex systems by creating smaller, manageable replicas that recreate critical characteristics of the original. In hydrology and civil infrastructure, for example, scaled models of dams help analyze water flow, turbulence, and pressure. This method allows for accurate predictions of real-world behavior within a controlled environment, significantly reducing the cost and time involved in full-scale...
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Adaptation of a Haptic Robot in a 3T fMRI
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PoseBERT: A Generic Transformer Module for Temporal 3D Human Modeling.

Fabien Baradel, Romain Bregier, Thibault Groueix

    IEEE Transactions on Pattern Analysis and Machine Intelligence
    |April 4, 2023
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    Summary
    This summary is machine-generated.

    PoseBERT enhances human pose estimation by leveraging 3D motion capture data. This transformer module improves video-based pose modeling without task-specific finetuning.

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    Area of Science:

    • Computer Vision
    • Machine Learning
    • Robotics

    Background:

    • Human pose estimation in videos is hindered by the difficulty and cost of acquiring annotated datasets.
    • Existing transformer methods for pose sequence modeling often rely on pseudo-ground truth for data augmentation.

    Purpose of the Study:

    • Introduce PoseBERT, a versatile transformer module for enhancing video-based human pose estimation.
    • Enable leveraging temporal information from 3D Motion Capture (MoCap) data for pose modeling.

    Main Methods:

    • PoseBERT is trained on 3D MoCap data using a masked modeling approach.
    • The module is designed to be integrated with existing image-based pose estimation models.
    • Variants accept diverse inputs, including 3D skeleton keypoints and parametric model rotations (SMPL, MANO).

    Main Results:

    • PoseBERT consistently improves the performance of state-of-the-art pose estimation methods.
    • The module demonstrates task-agnostic capabilities, applicable to pose refinement, prediction, and completion without finetuning.
    • A real-time demo showcases smooth robotic hand animation using PoseBERT with webcam input.

    Conclusions:

    • PoseBERT offers a simple, versatile, and effective solution for incorporating temporal dynamics into human pose estimation.
    • The method significantly advances video-based pose modeling by utilizing readily available MoCap data.
    • Its low computational cost and broad applicability make it suitable for real-time applications.