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FlexAI:マルチモーダルAIによる個別最適化された適応型フィットネス指導
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ポイント
- FlexAIは、コンピュータビジョン、生体センサー、LLMを統合し、リアルタイムで個別化された運動指導を提供するシステムを開発した。
- 従来の静的な運動計画とは異なり、利用者の状態に合わせて運動強度や休憩時間を動的に調整することで、より効果的な運動体験を提供する。
- 実験の結果、FlexAIは静的なシステムと比較して、利用者の運動への楽しさ、達成感、満足度を向上させることが示された。
Abstract
Personalization of exercise routines is a crucial factor in helping people achieve their fitness goals. Despite this, many contemporary solutions fail to offer real-time, adaptive feedback tailored to an individual's physiological states. Contemporary fitness solutions often rely only on static plans and do not adjust to factors such as a user's pain thresholds, fatigue levels, or form during a workout routine. This work introduces FlexAI, a multi-modal system that integrates computer vision, physiological sensors (heart rate and voice), and the reasoning capabilities of Large Language Models (LLMs) to deliver real-time, personalized workout guidance. FlexAI continuously monitors a user's physical form and level of exertion, among other parameters, to provide dynamic interventions focused on exercise intensity, rest periods, and motivation. To validate our system, we performed a technical evaluation confirming our models' accuracy and quantifying pipeline latency, alongside an expert review where certified trainers validated the correctness of the LLM's interventions. Furthermore, in a controlled study with 25 participants, FlexAI demonstrated significant improvements over a static, non-adaptive control system. With FlexAI, users reported significantly greater enjoyment, a stronger sense of achievement, and significantly lower levels of boredom and frustration. These results indicate that by integrating multi-modal sensing with LLM-driven reasoning, adaptive systems like FlexAI can create a more engaging and effective workout experience. Our work provides a blueprint for integrating multi-modal sensing with LLM-driven reasoning, demonstrating that it is possible to create adaptive coaching systems that are not only more engaging but also demonstrably reliable.
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