Human Gait Dataset for Biometric Authentication
收藏Zenodo2025-02-15 更新2026-05-26 收录
下载链接:
https://zenodo.org/doi/10.5281/zenodo.14875563
下载链接
链接失效反馈官方服务:
资源简介:
The Human Gait Dataset for Biometric Authentication consists of gait patterns collected from 87 individuals across multiple sessions using smartphone motion sensors. Each participant contributed data in two sessions, with three repetitions per session, and each session lasted approximately 1:30 minutes. The dataset was recorded using a self-developed web-based application, capturing a wide range of sensor-based features, including accelerometer, gyroscope, and rotation sensor data, along with demographic details such as gender, age, handedness, and educational qualification. The dataset includes linear acceleration measurements in the x, y, and z axes, rotational movement data from the gyroscope, gravitational force readings, and device orientation angles (Alpha, Beta, Gamma). These features provide valuable insights into gait-based authentication, making this dataset useful for developing biometric authentication systems, machine learning-based anomaly detection models, healthcare applications such as fall detection and rehabilitation analysis, and security applications for continuous authentication. The structured collection of gait data across multiple sessions ensures variability and robustness, allowing researchers to explore authentication strategies that leverage human movement patterns.
用于生物特征认证的人类步态数据集(Human Gait Dataset for Biometric Authentication)收录了87名受试者在多次数据采集会话中通过智能手机运动传感器获取的步态模式。每名受试者参与两次数据采集会话,每次会话包含三次重复采集,单次会话时长约1分30秒。本数据集通过自研的网页应用程序录制,采集了丰富的传感器特征数据,涵盖加速度计、陀螺仪与旋转传感器的监测数据,同时包含受试者的人口统计学信息,如性别、年龄、利手性与学历。数据集包含x、y、z三轴的线性加速度测量值、陀螺仪旋转运动数据、重力加速度读数,以及设备姿态角(Alpha、Beta、Gamma)。上述特征可为基于步态的认证研究提供关键参考,使该数据集可用于开发生物特征认证系统、基于机器学习的异常检测模型、跌倒检测与康复分析等医疗应用,以及持续认证类安全应用。跨多会话的结构化步态数据采集确保了数据的多样性与鲁棒性,可为研究者探索基于人体运动模式的认证策略提供有力支撑。
提供机构:
Zenodo创建时间:
2025-02-15



