论文标题

视觉传感器网络刺激模型通过高斯混合模型和深层嵌入特征识别

Visual Sensor Network Stimulation Model Identification via Gaussian Mixture Model and Deep Embedded Features

论文作者

Varotto, Luca, Fabris, Marco, Michieletto, Giulia, Cenedese, Angelo

论文摘要

视觉传感器网络(VSN)构成了具有独特复杂性和吸引力的性能功能的基本类别的分布式传感系统类别,相应地带来了相当活跃的研究线。一个重要的研究方向在于对VSN感应特征的识别和估计:与摄像机数量缩放或观察到的场景复杂性时,这些方向实际上很有用。考虑到这种情况,本文首次介绍了刺激模型(SM)的想法,作为一组可检测的事件与观察这些事件的相应刺激摄像机之间的数学关系。提出了相关SM识别问题的公式,以及适当的网络观测模型,以及基于深层嵌入式特征和软聚类的解决方案方法。详细介绍:首先,使用高斯混合物建模来提供适当的数据分布描述,而自动编码器则用于减少由于大规模网络而出现的所谓维度诅咒,因此减少了不希望的效果。然后,可以通过在属于具有较低维度的空间的编码特征上求解最大的A-tosteriori估计来学习SM。据报道,关于合成场景的数值结果验证了设计的估计算法。

Visual sensor networks (VSNs) constitute a fundamental class of distributed sensing systems, with unique complexity and appealing performance features, which correspondingly bring in quite active lines of research. An important research direction consists in the identification and estimation of the VSN sensing features: these are practically useful when scaling with the number of cameras or with the observed scene complexity. With this context in mind, this paper introduces for the first time the idea of Stimulation Model (SM), as a mathematical relation between the set of detectable events and the corresponding stimulated cameras observing those events. The formulation of the related SM identification problem is proposed, along with a proper network observations model, and a solution approach based on deep embedded features and soft clustering. In detail: first, the Gaussian Mixture Modeling is employed to provide a suitable description for data distribution, while an autoencoder is used to reduce undesired effects due to the so-called curse of dimensionality emerging in case of large scale networks. Then, it is shown that a SM can be learnt by solving Maximum A-Posteriori estimation on the encoded features belonging to a space with lower dimensionality. Numerical results on synthetic scenarios are reported to validate the devised estimation algorithm.

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