With the advancement of mobile sensing and artificial intelligence technologies, human-centered wireless sensing methodologies have shown the great potential of using wireless signals (e.g., acoustic, WiFi, radar) to realize contactless… Click to show full abstract
With the advancement of mobile sensing and artificial intelligence technologies, human-centered wireless sensing methodologies have shown the great potential of using wireless signals (e.g., acoustic, WiFi, radar) to realize contactless and non-intrusive services. These applications facilitate various domains for smart homes and smart cities, such as security, medication, and transportation. However, current human-centered wireless sensing systems require complex signal preprocessing, handcrafted feature extraction, and a tremendous number of labeled data, which significantly hinder its performance and adoption. In this article, we present a meta-learning-based human-centered wireless sensing framework, which optimizes signal preprocessing, feature extraction, and data analysis by utilizing meta-knowledge learned in meta-learning. Specifically, we present the working principle, architecture, potential applications, research challenges and future directions of meta-learning-based human-centered wireless sensing.
               
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