IndoorHIIT-activity-recognition:动作识别小程序,包含了完整的python项目代码,微信小程序源码以及数据集-源码

上传者: 42104778 | 上传时间: 2021-05-12 07:26:02 | 文件大小: 31.03MB | 文件类型: ZIP
室内HIIT动作识别项目说明 山东大学(威海) 18数据科学孙易泽 本项目为通过微信小程序进行动作的识别,项目拾取了徒手侧平举,前后交叉小跳,开合跳,半蹲四个动作,在测试者左手手持手机的情况下,利用微信小程序实时采集手机的六轴数据,并用随机森林模型和波峰检测法,对测试者做出的动作进行实时的识别和计数。 以下说明,为项目文件中各个文件夹的相关说明 python项目 数据文件夹:训练所用数据,处理之后的数据 进程文件夹:预数据代码,包括信号处理与窗口切割数据 功能文件夹:特征提取以及特征选取相关代码 machineLearning文件夹:各个算法测试比对,算法的优化与提升 numcount文件夹:动作计数相关代码测试 Web文件夹:服务器部署代码 IndoorHIIT.ipynb:python完整的工程说明文档,可在工程中直接查看,或访问以下网址: 微信小程序 小程序已发布,二维码如下: 完

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