Video Sitting Posture Recognition of Human Skeletal Features Based on Deep Learning

Hongmei Yang, Xiquan Yang
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Abstract

Sitting in a poor posture for long time can be detrimental to your health. In this regard, video-based detection of poor sitting posture and providing alerts can help people to improve their physical and mental health and productivity. The use of computer vision to detect human sitting posture is a simple method, but there is a problem of low accuracy in practical applications. In this paper, we propose a video sitting detection method based on multidimensional skeletal features of the human body. Using OpenPose to extract human information features from video sequences, global angle information and local angle information formed by human skeletal segments are used as dimensional features, and sitting posture recognition is detected by deep learning with LSTM models. Experiments show that the method effectively improves the accuracy rate.
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基于深度学习的人体骨骼特征视频坐姿识别
长时间以不良姿势坐着对你的健康有害。在这方面,基于视频的不良坐姿检测和提供警报可以帮助人们改善他们的身心健康和生产力。利用计算机视觉检测人体坐姿是一种简单的方法,但在实际应用中存在准确率不高的问题。本文提出了一种基于人体多维骨骼特征的视频坐姿检测方法。利用OpenPose从视频序列中提取人体信息特征,以人体骨骼片段形成的全局角度信息和局部角度信息作为维度特征,利用LSTM模型进行深度学习检测坐姿识别。实验表明,该方法有效地提高了准确率。
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