Crowd-Based Learning of Spatial Fields for the Internet of Things: From Harvesting of Data to Inference.

IEEE Signal Processing Magazine(2018)

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摘要
The knowledge of spatial distributions of physical quantities, such as radio-frequency (RF) interference, pollution, geomagnetic field magnitude, temperature, humidity, audio, and light intensity, will foster the development of new context-aware applications. For example, knowing the distribution of RF interference might significantly improve cognitive radio systems [1], [2]. Similarly, knowing th...
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关键词
Spatial analysis,Signal processing algorithms,Wireless sensor networks,Internet of Things,Complexity theory,Hidden Markov models
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