CAM-Vtrans: real-time sports training utilizing multi-modal robot data.

Hong LinLin, Lee Sangheang, Song GuanTing
Author Information
  1. Hong LinLin: College of Physical Education, Jeonju University, Jeonju, Jeollabuk-do, Republic of Korea.
  2. Lee Sangheang: College of Physical Education, Jeonju University, Jeonju, Jeollabuk-do, Republic of Korea.
  3. Song GuanTing: Gongqing Institute of Science and Technology, Jiujiang, Jiangxi Province, China.

Abstract

Introduction: Assistive robots and human-robot interaction have become integral parts of sports training. However, existing methods often fail to provide real-time and accurate feedback, and they often lack integration of comprehensive multi-modal data.
Methods: To address these issues, we propose a groundbreaking and innovative approach: CAM-Vtrans-Cross-Attention Multi-modal Visual Transformer. By leveraging the strengths of state-of-the-art techniques such as Visual Transformers (ViT) and models like CLIP, along with cross-attention mechanisms, CAM-Vtrans harnesses the power of visual and textual information to provide athletes with highly accurate and timely feedback. Through the utilization of multi-modal robot data, CAM-Vtrans offers valuable assistance, enabling athletes to optimize their performance while minimizing potential injury risks. This novel approach represents a significant advancement in the field, offering an innovative solution to overcome the limitations of existing methods and enhance the precision and efficiency of sports training programs.

Keywords

References

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Word Cloud

Created with Highcharts 10.0.0sportstrainingmulti-modaldatainteractionexistingmethodsoftenprovidereal-timeaccuratefeedbackinnovativeVisualCLIPcross-attentionCAM-VtransathletesrobotIntroduction:Assistiverobotshuman-robotbecomeintegralpartsHoweverfaillackintegrationcomprehensiveMethods:addressissuesproposegroundbreakingapproach:CAM-Vtrans-Cross-AttentionMulti-modalTransformerleveragingstrengthsstate-of-the-arttechniquesTransformersViTmodelslikealongmechanismsharnessespowervisualtextualinformationhighlytimelyutilizationoffersvaluableassistanceenablingoptimizeperformanceminimizingpotentialinjuryrisksnovelapproachrepresentssignificantadvancementfieldofferingsolutionovercomelimitationsenhanceprecisionefficiencyprogramsCAM-Vtrans:utilizingassistiveroboticsbalancecontrolhuman-machinemovementrecoveryvision-transformer

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