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Energy-Efficient Context Classification With Dynamic Sensor Control

机译:动态传感器控制的节能上下文分类

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摘要

Energy efficiency has been a longstanding design challenge for wearable sensor systems. It is especially crucial in continuous subject state monitoring due to the ongoing need for compact sizes and better sensors. This paper presents an energy-efficient classification algorithm, based on partially observable Markov decision process (POMDP). In every time step, POMDP dynamically selects sensors for classification via a sensor selection policy. The sensor selection problem is formalized as an optimization problem, where the objective is to minimize misclassification cost given some energy budget. State transitions are modeled as a hidden Markov model (HMM), and the corresponding sensor selection policy is represented using a finite-state controller (FSC). To evaluate this framework, sensor data were collected from multiple subjects in their free-living conditions. Relative accuracies and energy reductions from the proposed method are compared against naïve Bayes (always-on) and simple random strategies to validate the relative performance of the algorithm. When the objective is to maintain the same classification accuracy, significant energy reduction is achieved.
机译:对于可穿戴传感器系统,能源效率一直是长期的设计挑战。由于持续需要紧凑的尺寸和更好的传感器,因此在连续的受试者状态监测中,这一点尤其重要。本文提出了一种基于部分可观察的马尔可夫决策过程(POMDP)的节能分类算法。在每个时间步中,POMDP都会通过传感器选择策略动态选择要分类的传感器。传感器选择问题被形式化为优化问题,其目的是在给定一些能量预算的情况下将错误分类的成本降至最低。状态转换被建模为隐马尔可夫模型(HMM),并且相应的传感器选择策略使用有限状态控制器(FSC)表示。为了评估该框架,从多个受试者的自由生活条件下收集了传感器数据。将所提方法的相对精度和能耗降低与朴素贝叶斯算法(始终在线)和简单随机策略进行比较,以验证算法的相对性能。当目标是保持相同的分类精度时,可以显着降低能耗。

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