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SPOTLESS: Similarity patterns of trajectories in label-less sensor streams

机译:无斑点:无标签传感器流中的轨迹相似模式

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The process of inversion, estimation and reconstruction of the sensor quality matrix, allows modeling the precision and accuracy, and in general the reliability of the model. When the sensor data ranges are not known a priori, current systems do not train on new data samples, rather they approximate based on the parameter's global average value, losing most of the spatial and temporal features. The proposed model, which we call SPOTLESS, checks the spatial integrity and temporal plausibility of streams generated by mobility patterns due to varying channel conditions. We define a minimum quality of the measured sensor data as local stream (QoD) requirements to give high precision by using distributed labeled training. In our SPOTLESS data-cleaning steps, to account for packet errors due to varying channel conditions, a soft-phy based decoding is selected for various Bit Error Rates (BER), minimizing packet loss at the mobile receiver. Numerical experiments for Rayleigh fading channels and mobile BER model examples are compared with large deployment of ground sensor collecting static data streams and Data MULE collecting multi-hop temporal data from the sensor to provide hypothetical parameter accuracy. Our results were obtained in the context of provisioning a minimum precision and accuracy stream (QoD) required for 802.15.4 mobile services. SPOTLESS data-cleaning algorithm coding provides 90% precision for static streams, and increases the plausible relevance of multi-hop mobile streams by 85% for task-based learning.
机译:传感器质量矩阵的求逆,估计和重建过程允许对精度和准确性进行建模,并且通常对模型进行可靠性分析。如果先验未知传感器数据范围,则当前系统不会训练新的数据样本,而是基于参数的全局平均值进行近似,从而丢失大部分空间和时间特征。所提出的模型,我们称为SPOTLESS,检查由于信道条件变化而由移动性模式生成的流的空间完整性和时间合理性。我们将测量的传感器数据的最低质量定义为本地流(QoD)要求,以通过使用分布式标记训练来提供高精度。在我们的SPOTLESS数据清理步骤中,要考虑由于信道条件变化而引起的分组错误,为各种误码率(BER)选择了基于soft-phy的解码,从而最大程度地减少了移动接收机的分组丢失。将瑞利衰落信道的数值实验和移动BER模型示例与地面传感器的大型部署(收集静态数据流)和Data MULE(从传感器收集多跳时间数据)的大型部署进行了比较,以提供假设的参数准确性。我们的结果是在提供802.15.4移动服务所需的最低精度和准确性流(QoD)的背景下获得的。 SPOTLESS数据清理算法编码可为静态流提供90%的精度,并且对于基于任务的学习,将多跳移动流的合理相关性提高85%。

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