E3V-K5: An Authentic Benchmark for Redefining Video-Based Energy Expenditure Estimation
Shengxuming Zhang, Lei Jin, Yifan Wang, Xinyu Wang, Xu Wen, Zunlei Feng*, Mingli Song
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Abstract
"Accurately estimating energy expenditure (EE) is crucial for optimizing athletic training, monitoring daily activity levels, and preventing sports-related injuries. Estimating energy expenditure based on video (E3 V) is an appealing research direction. This paper introduces E3V-K5, an authentic dataset of sports videos that significantly enhances the accuracy of EE estimation. The dataset comprises 16,526 video clips from various categories and intensity of sports with continuous calorie readings obtained from the COSMED K5 indirect calorimeter, recognized as the most reliable standard in sports research. Augmented with the heart rate and physical attributes of each subject, the volume, diversity, and authenticity of E3V-K5 surpass all previous video datasets in E3 V, making E3V-K5 a cornerstone in this field and facilitating future research. Furthermore, we propose E3SFormer, a novel approach specifically designed for the E3V-K5 dataset, focusing on EE estimation using human skeleton data. E3SFormer consists of two Transformer branches for simultaneous action recognition and EE regression. The attention of joints from the action recognition branch is utilized in assisting the EE regression branch. Extensive experimentation validates E3SFormer’s effectiveness, demonstrating its superior performance to existing skeleton-based action recognition models. Our dataset and code are publicly available at https://github.com/zsxm1998/E3V."
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