Papers
arxiv:2506.03198

FLEX: A Large-Scale Multi-Modal Multi-Action Dataset for Fitness Action Quality Assessment

Published on Jun 2, 2025
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Abstract

The FLEX dataset enhances Action Quality Assessment by incorporating multimodal data, including sEMG signals and 3D pose, for a wide range of weight-loaded fitness actions across different skill levels.

AI-generated summary

With the increasing awareness of health and the growing desire for aesthetic physique, fitness has become a prevailing trend. However, the potential risks associated with fitness training, especially with weight-loaded fitness actions, cannot be overlooked. Action Quality Assessment (AQA), a technology that quantifies the quality of human action and provides feedback, holds the potential to assist fitness enthusiasts of varying skill levels in achieving better training outcomes. Nevertheless, current AQA methodologies and datasets are limited to single-view competitive sports scenarios and RGB modality and lack professional assessment and guidance of fitness actions. To address this gap, we propose the FLEX dataset, the first multi-modal, multi-action, large-scale dataset that incorporates surface electromyography (sEMG) signals into AQA. FLEX utilizes high-precision MoCap to collect 20 different weight-loaded actions performed by 38 subjects across 3 different skill levels for 10 repetitions each, containing 5 different views of the RGB video, 3D pose, sEMG, and physiological information. Additionally, FLEX incorporates knowledge graphs into AQA, constructing annotation rules in the form of penalty functions that map weight-loaded actions, action keysteps, error types, and feedback. We conducted various baseline methodologies on FLEX, demonstrating that multimodal data, multiview data, and fine-grained annotations significantly enhance model performance. FLEX not only advances AQA methodologies and datasets towards multi-modal and multi-action scenarios but also fosters the integration of artificial intelligence within the fitness domain. Dataset and code are available at https://haoyin116.github.io/FLEX_Dataset.

Community

Title: Exercise labels missing from QEVD-FIT-COACH long-range video JSON

Hello,

I am a computer science student using the QEVD-FIT-COACH dataset for my
graduation project. I downloaded the dataset from the Qualcomm developer
portal and noticed that the feedbacks_long_range.json file does not contain
exercise names or exercise timestamps for the long-range videos.

The JSON only contains: long_range_video_file, video_timestamps, feedbacks,
is_transition, feedback_timestamps.

The paper mentions that each long-range video contains 5-6 exercises in
sequence. Is there a separate annotation file that maps each video to its
exercise sequence with timestamps? For example, a file that says:
0000.mp4: [highknees (0-35s), airjumprope (35-70s), ...]

Without this information I cannot correctly label my training segments for
exercise classification.

Thank you for your help.

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