fugerensing
Fugerensing is a developing framework for detecting transient, elusive signals in multi-sensor data streams by fusing information across different modalities and time scales. It seeks to identify brief events that may be obscured by noise, background clutter, or data gaps.
The coinage combines "fugitive" or "fuges" and "sensing," suggesting signals that appear briefly and may not be
Methodologically, fugerensing draws on time-series analysis, probabilistic inference, sparse signal reconstruction, and machine learning, integrating data-level
Applications span environmental monitoring of trace emissions or pollutants, industrial safety for detecting transient leaks or
Challenges include heterogeneity and calibration across sensors, missing or irregular data, low signal-to-noise ratio, and computational
See also: data fusion, weak-signal detection, transient signal processing, sensor networks, anomaly detection.