Transfer Learning with Deep Representations is Used to Recognition Yoga Postures

J. Palanimeera, K. Ponmozhi
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Abstract

Human activity identification is the automated interpretation of the movements happen in a video done by a human. Iterative Due to its wide applications in fields such as autonomous driving, biomedical imaging, and machine intelligence vision, among others, recognizing human activity in an image remains a tough and crucial research subj ect in the field of computer vision. Deep learning techniques have recently advanced, and models for image identification and classification, object detection, and speech recognition have been successfully implemented. Only a few examples include different aspects of human structure and movement, diffraction, a busy background, and so on. Moving cameras, changing lighting conditions and changing perspectives are all things to think about. Yoga is an excellent kind of physical activity. It's critical to maintain proper yoga posture. This research provides a unique technique for yoga asana detection based on feature extraction and representation Using a deep CNN model that has already been trained, followed by yoga asana recognition using a hybrid Support Vector Machine (SVM) and K-Nearest Neighbor (KNN) classifier. With the constrained training datasets, it was discovered that previously learned CNN-based representations on large-scale annotated datasets may be applied to yoga asana recognition tasks. In real-time datasets, the suggested approach is tested on seven yoga asana (Pranamasana, Dhanurasan, Dandasana, Gomukhasan, Garudasana, Padmavrikshasana and Padmasan). The results show that the proposed scheme outperforms the state of the art methods.
基于深度表征的迁移学习用于瑜伽姿势识别
人类活动识别是对人类在视频中所做动作的自动解释。由于其在自动驾驶、生物医学成像和机器智能视觉等领域的广泛应用,识别图像中的人类活动仍然是计算机视觉领域的一个艰难而关键的研究课题。深度学习技术最近取得了进步,图像识别和分类、目标检测和语音识别的模型已经成功实现。只有几个例子包括人体结构和运动的不同方面,衍射,繁忙的背景,等等。移动摄像机,改变照明条件和改变视角都是需要考虑的事情。瑜伽是一种极好的体育活动。保持正确的瑜伽姿势是至关重要的。本研究提供了一种独特的基于特征提取和表示的瑜伽体式检测技术,该技术使用已经训练好的深度CNN模型,然后使用混合支持向量机(SVM)和k -最近邻(KNN)分类器进行瑜伽体式识别。通过约束训练数据集,我们发现以前学习过的基于cnn的大规模标注数据集表示可以应用于瑜伽体式识别任务。在实时数据集中,建议的方法在七种瑜伽体式(Pranamasana, Dhanurasan, Dandasana, Gomukhasan, Garudasana, padmavrikshaasana和Padmasan)上进行了测试。结果表明,所提出的方案优于目前最先进的方法。
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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