基于ARM cortex m4的可扩展多模态可穿戴平台,用于传感器研究和来自运动和声音的上下文传感

D. Roggen
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引用次数: 4

摘要

我们提出了一个可扩展的传感器研究平台,适用于可穿戴和无处不在的计算应用中基于运动和声音的活动和上下文识别。30x30mm平台可通过插件板扩展,这使得它非常适合探索新的传感器技术。它的固件可以获取9轴惯性测量单元(IMU)数据和高达565Hz的四元数设备方向,16KHz的声音和外部模拟输入,无需任何编程,允许非专家使用。不同模态的数据可以单独或同时获取,用于多模态传感,并且可以通过蓝牙传输或本地存储。该平台具有实时时钟,可以在±10ppm的频率公差范围内从多个节点采集数据,无需节点间连接。这对于从多个人那里收集数据很有用。获取多模态数据时,流传输时的测量功耗为222mW,记录到SD卡时为67mW。如果使用165mAh的电池,则可以分别使用2h15mn和9h,重量为10.8g(不含电池为6.75g)。
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ARM cortex M4-based extensible multimodal wearable platform for sensor research and context sensing from motion & sound
We present an extensible sensor research platform suitable for motion- and sound-based activity and context recognition in wearable and ubiquitous computing applications. The 30x30mm platform is extensible through plug-in boards, which makes it well suited to explore novel sensor technologies. Its firmware can acquire 9-axis inertial measurement unit (IMU) data and device orientation in quaternions at up to 565Hz, sound at 16KHz and external analog inputs, without any programming, allowing for use by non-experts. The data of distinct modalities can be acquired in isolation or simultaneously for multimodal sensing, and can be streamed over Bluetooth or stored locally. The platform has a real-time clock, which enables the acquisition of the data from multiple nodes with a ±10ppm frequency tolerance, without requiring inter-node connectivity. This is useful to collect data from multiple people. Acquiring multimodal data, the measured power consumption is 222mW when streaming and 67mW when logging to an SD card. With a 165mAh battery, this leads to 2h15mn and 9h of operation, respectively, with a weight of 10.8g (6.75g without battery).
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