In this paper we present a privacy-aware method for estimating source-dominated microphone clusters in the context of acoustic sensor networks (ASNs). The approach is based on clustered federated learning which we adapt to unsupervised scenarios by employing a light-weight autoencoder model. The model is further optimized for training on very scarce data. In order to best harness the benefits of clustered microphone nodes in ASN applications, a method for the computation of cluster membership values is introduced. We validate the performance of the proposed approach using clustering-based measures and a network-wide classification task.
翻译:在本文中,我们提出了一个了解隐私的方法,用于在声传感器网络中估计以源为主的麦克风群集,该方法基于分组联合学习,我们通过采用轻量级自动编码模型来适应不受监督的假设情况,该模型进一步优化用于非常稀少的数据培训。为了最好地利用非典型网络应用中组合式麦克风节点的好处,我们采用了分组成员价值计算方法。我们利用集群措施和全网络分类任务来验证拟议方法的绩效。