论文标题
可靠提取语义信息和图形信号创新估计速率
Reliable Extraction of Semantic Information and Rate of Innovation Estimation for Graph Signals
论文作者
论文摘要
语义信号处理和通信有望在开发下一代传感器设备和网络中发挥核心作用。语义系统的关键组成部分是从原始输入信号中提取语义信号,随着机器学习(ML)和人工智能(AI)技术的最新进展,它变得越来越易于处理。使用上述ML和AI方法准确提取语义信号,以及用于调度传输和/或存储事件的语义创新的检测是可靠的语义信号处理和通信的关键任务。在这项工作中,我们基于我们以前在基于层次图的结构中的语义信号表示的工作提出了一个可靠的语义信息提取框架。所提出的框架包括一种时间集成方法,以阶级感知方式增加ML输出的保真度,这是一种基于图形 - 编辑距离的指标,可在图形级别检测创新事件并过滤散发性误差,以及一个隐藏的Markov模型(HMM),以产生光滑且可靠的图形信号。通过基于现实世界计算机视觉示例的模拟和案例研究,可以单独和共同证明框架中提出的方法。
Semantic signal processing and communications are poised to play a central part in developing the next generation of sensor devices and networks. A crucial component of a semantic system is the extraction of semantic signals from the raw input signals, which has become increasingly tractable with the recent advances in machine learning (ML) and artificial intelligence (AI) techniques. The accurate extraction of semantic signals using the aforementioned ML and AI methods, and the detection of semantic innovation for scheduling transmission and/or storage events are critical tasks for reliable semantic signal processing and communications. In this work, we propose a reliable semantic information extraction framework based on our previous work on semantic signal representations in a hierarchical graph-based structure. The proposed framework includes a time integration method to increase fidelity of ML outputs in a class-aware manner, a graph-edit-distance based metric to detect innovation events at the graph-level and filter out sporadic errors, and a Hidden Markov Model (HMM) to produce smooth and reliable graph signals. The proposed methods within the framework are demonstrated individually and collectively through simulations and case studies based on real-world computer vision examples.