首页> 外文会议>2011 IEEE/ACM Second International Conference on Cyber-Physical Systems >An Ultra Low Power Granular Decision Making Using Cross Correlation: Minimizing Signal Segments for Template Matching
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An Ultra Low Power Granular Decision Making Using Cross Correlation: Minimizing Signal Segments for Template Matching

机译:使用互相关的超低功耗粒度决策:最小化模板匹配的信号段

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Wearable sensor platforms have proved effective in a large variety of new application domains including wellness and healthcare, and are perfect examples of cyber physical systems. A major obstacle in realization of these systems is the amount of energy required for sensing, processing and communication, which can jeopardize small battery size and wear ability of the entire system. In this paper, we propose an ultra low power granular decision making architecture, also called screening classifier, that can be viewed as a tiered wake up circuitry. This processing model operates based on simple template matching. Ideally, the template matching is performed with low sensitivity but at very low power. Initial template matching removes signals that are obviously not of interest from the signal processing chain keeping the rest of processing modules inactive. If the signal is likely to be of interest, the sensitivity and the power of the template matching blocks are gradually increased and eventually the microcontroller is activated. We pose and solve an optimization problem to realize our screening classifier and improve the accuracy of classification by dividing a full template into smaller bins, called mini-templates, and activating optimal number of bins during each classification decision. Our experimental results on real data show that the power consumption of the system can be reduced by more than 70% using this intelligent processing architecture. The power consumption of the proposed granular decision making module is six orders of magnitude smaller than state-of-the-art low power microcontrollers.
机译:事实证明,可穿戴传感器平台在包括健康和医疗保健在内的许多新应用领域中都是有效的,并且是网络物理系统的完美示例。实现这些系统的主要障碍是传感,处理和通信所需的能量,这可能会危害较小的电池尺寸和整个系统的磨损能力。在本文中,我们提出了一种超低功耗粒度决策体系结构,也称为筛选分类器,可以将其视为分层唤醒电路。该处理模型基于简单的模板匹配进行操作。理想地,模板匹配以低灵敏度但以非常低的功率执行。初始模板匹配从信号处理链中删除了显然不重要的信号,从而使其余处理模块保持不活动状态。如果信号可能令人感兴趣,则逐渐增加模板匹配模块的灵敏度和功率,并最终激活微控制器。我们提出并解决一个优化问题,以实现我们的筛选分类器,并通过将完整模板划分为较小的箱(称为迷你模板)并在每个分类决策中激活最佳箱数来提高分类的准确性。我们在真实数据上的实验结果表明,使用这种智能处理体系结构可以将系统的功耗降低70%以上。所提出的颗粒状决策模块的功耗比最新的低功耗微控制器小六个数量级。

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