Wu Hongle, Kato Takafumi, Yamada Tomomi, Numao Masayuki, Fukui Ken-Ichi
Department of Architecture for Intelligence, The Institute of Scientific and Industrial Research, Osaka University, Japan.
Department of Oral Physiology, Graduate School of Dentistry, Osaka University, Japan.
Artif Intell Med. 2017 Jul;80:1-10. doi: 10.1016/j.artmed.2017.06.012. Epub 2017 Jul 11.
We propose a method to discover sleep patterns via clustering of sound events recorded during sleep. The proposed method extends the conventional self-organizing map algorithm by kernelization and sequence-based technologies to obtain a fine-grained map that visualizes the distribution and changes of sleep-related events. We introduced features widely applied in sound processing and popular kernel functions to the proposed method to evaluate and compare performance. The proposed method provides a new aspect of sleep monitoring because the results demonstrate that sound events can be directly correlated to an individual's sleep patterns. In addition, by visualizing the transition of cluster dynamics, sleep-related sound events were found to relate to the various stages of sleep. Therefore, these results empirically warrant future study into the assessment of personal sleep quality using sound data.
我们提出了一种通过对睡眠期间记录的声音事件进行聚类来发现睡眠模式的方法。所提出的方法通过内核化和基于序列的技术扩展了传统的自组织映射算法,以获得一个细粒度的映射,该映射可视化与睡眠相关事件的分布和变化。我们将在声音处理中广泛应用的特征和流行的内核函数引入到所提出的方法中,以评估和比较性能。所提出的方法为睡眠监测提供了一个新的视角,因为结果表明声音事件可以直接与个体的睡眠模式相关联。此外,通过可视化聚类动态的转变,发现与睡眠相关的声音事件与睡眠的各个阶段有关。因此,这些结果从经验上证明了未来使用声音数据评估个人睡眠质量的研究是合理的。