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FitMe: A Fitness Application for Accurate Pose Estimation Using Deep Learning

机译:FITME:使用深度学习的准确姿态估算的健身应用

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The advancements in deep learning have brought about crucial transformations in computer vision over the past two decades. Deep convolutional networks have found many applications in building fine-tuned models for implementation in vision-related tasks. Knowledge learned by deep learning models over enormous generic datasets can be transferred to be employed for much more specific tasks. In this work, are implementing the approach to provide health benefits to people. In the present work, we develop an application which help them in performing exercises without the help of a trainer and get instant feedback about the postures. We aim to make fitness accessible to all by removing barriers such as external hardware requirements and cost-based subscriptions. In this paper, we dive deep into the technical details about the application and the exact methodologies applied for building the same. Furthermore, results are evaluated after running the application over multiple scenarios and a comparative analysis is performed.
机译:在过去的二十年中,深度学习的进步带来了计算机视觉中的重要转变。深度卷积网络在构建微调模型方面找到了许多应用,以便在视觉相关的任务中实现。通过深入学习模型在巨大的通用数据集中学习的知识可以转移到更具体的任务。在这项工作中,正在实施对人们提供健康益处的方法。在目前的工作中,我们开发一个应用程序,帮助他们在没有培训师的帮助下执行练习并获得关于姿势的即时反馈。我们的目标是通过消除外部硬件要求和基于成本的订阅等障碍来使所有人能够对所有人提供。在本文中,我们深入了解了有关应用的技术细节和适用于建立的确切方法。此外,在运行多种情况下运行施加后评估结果,并进行比较分析。

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