sensorifuusio
Sensorifuusio is the process of merging data from multiple sensors to produce more accurate, reliable, and comprehensive information than would be possible with any single sensor. By combining complementary measurements, sensorifuusio reduces uncertainty, improves state estimation, and supports robust decision making in dynamic environments. It is widely used in robotics, autonomous vehicles, aerospace, industrial automation, and wearable health technologies.
Sensorifuusio can be performed at different levels: raw data fusion, where the original sensor signals are
A typical system synchronizes sensors in time and space, calibrates them, and accounts for varying sampling
Origins trace to aerospace and guidance systems in the mid-20th century with the Kalman filter. The term