基于改进密集轨迹算法的社区老年休闲运动辅助机器人控制模型

Ruisheng Jiao , Haibin Wang , Juan Luo
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引用次数: 0

摘要

随着社区老年人口的增加,需要更高效、更精确的娱乐和运动辅助机器人来保障他们的生活质量。本研究提出了一种基于改进型密集轨迹算法的控制模型,以提高娱乐和锻炼辅助机器人的识别和响应能力。该模型的主要方法是改进密集轨迹算法,提高其对复杂和细小动作的识别速度和准确性。具体来说,该研究深入细化了康体运动辅助机器人的控制过程,并结合动作捕捉构建了康体运动辅助机器人模型。利用改进的密集算法优化了健康与运动辅助机器人的控制模型。改进的密集轨迹算法具有特征嵌入和关注机制,可以补充模型的输入数据,从而实现更准确的动作识别。结果显示,在五个样本中,实验组的娱乐效果得分平均为 8.9 分,明显高于对照组的 7.3 分。识别准确率分别提高了 2.7 % 和 3.9 %,有效抑制了摄像机运动的影响。使用改进的密集轨迹算法后,在相同处理时间下,健康训练助理机器人的适配度达到 96.25%,比传统模型的适配度 87.32% 高出 8.93%。综上所述,基于改进密集轨迹算法的社区老年人健康锻炼辅助机器人控制模型实现了对老年人动作更准确、更快速的识别和响应,为老年人的健康锻炼提供了更高效的技术手段,提高了老年人的健康效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Control model of community elderly recreational exercise assistive robot based on improved dense trajectory algorithm
As the number of elderly population in the community grows, more efficient and precise recreation and exercise aids are needed to safeguard their quality of life. The study proposes a control model based on an improved dense trajectory algorithm to enhance the recognition and response capabilities of recreation and exercise assistance robots. The main method of the model is to improve the dense trajectory algorithm to enhance its recognition speed and accuracy for complex and small movements. Specifically, the study deeply refined the control process of a health and exercise assisted robot, and combined action capture to construct a health and exercise assisted robot model. The control model of the health and exercise assisted robot was optimized using an improved dense algorithm. The improved dense trajectory algorithm has feature embedding and attention mechanism, which can supplement the input data of the model, thus enabling more accurate action recognition. The results show that among the five samples, the recreation effectiveness score of the experimental group averaged 8.9, which was significantly higher than that of the control group, which was 7.3. The recognition accuracy has been improved by 2.7 % and 3.9 %, respectively, effectively suppressing the influence of camera motion. After using the improved dense trajectory algorithm, the fitness of the health training assistant robot reached 96.25 % under the same processing time, which is 8.93 % higher than the traditional model's fitness of 87.32 %. In summary, the control model of a community elderly health exercise assistance robot based on improved dense trajectory algorithm has achieved more accurate and faster recognition and response to the actions of the elderly, providing a more efficient technical means for health exercise and improving the health effect of the elderly.
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