AI Yoga Gesture Detection

Dr. Suresha D, Ateef Hussain Sheikh, Chaithanya, Disha Hebbar, Jagannath S Urva
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引用次数: 0

Abstract

The purpose of this project is to develop a joint point analysis-based AI-powered yoga posture detection system. The main goal is to create a virtual trainer that can accurately recognize different yoga poses and provide users with immediate feedback. The technology employs sophisticated computer vision algorithms to detect the user's stance by analyzing key joint locations in their body and then advising them on how to correct their posture. The AI yoga gesture detection model achieved an impressive overall accuracy of 95% during training, demonstrating its ability to learn from the dataset and make accurate predictions. When tested on the testing dataset, the model maintained a high accuracy rate of 90%, indicating strong performance in classifying yoga poses on previously unseen data. However, a validation accuracy of 60% indicates a discrepancy between the model's performance on the testing set and its generalization ability. Despite this, the model's high overall accuracy during the training and testing stages demonstrates its ability to accurately identify yoga poses, assisting users in achieving proper alignment and form during yoga practice.
AI 瑜伽手势检测
本项目旨在开发一个基于关节点分析的人工智能瑜伽姿势检测系统。主要目标是创建一个能准确识别不同瑜伽姿势并为用户提供即时反馈的虚拟教练。该技术采用了复杂的计算机视觉算法,通过分析用户身体的关键关节位置来检测其姿势,然后建议用户如何纠正姿势。在训练过程中,人工智能瑜伽姿态检测模型的总体准确率达到了令人印象深刻的 95%,这表明它有能力从数据集中学习并做出准确的预测。在测试数据集上进行测试时,该模型保持了 90% 的高准确率,这表明它在对以前未见过的数据进行瑜伽姿势分类方面表现出色。然而,60% 的验证准确率表明模型在测试集上的表现与其泛化能力之间存在差异。尽管如此,该模型在训练和测试阶段的总体准确率很高,这表明它有能力准确识别瑜伽姿势,帮助用户在练习瑜伽时获得正确的排列和姿势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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