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Continuous Classification of Spatio-temporal Data Streams Using Liquid State Machines

机译:使用液体状态机对时空数据流进行连续分类

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This paper proposes to use a Liquid State Machine (LSM) to classify inertial sensor data collected from horse riders into activities of interest. LSM was shown to be an effective classifier for spatio-temporal data and efficient hardware implementations on custom chips have been presented in literature that would enable relative easy integration into wearable technologies. We explore here the general method of applying LSM technology to domain constrained activity recognition using a synthetic data set. The aim of this study is to provide a proof of concept illustrating the applicability of LSM for the chosen problem domain.
机译:本文建议使用液体状态机(LSM)将从骑马者那里收集的惯性传感器数据分类为感兴趣的活动。 LSM被证明是时空数据的有效分类器,并且在文献中已经介绍了在定制芯片上的高效硬件实现,这将使相对容易地集成到可穿戴技术中。我们在这里探索使用合成数据集将LSM技术应用于领域受限活动识别的一般方法。这项研究的目的是提供一个概念证明,说明LSM在所选问题域中的适用性。

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