extractdriving
Extractdriving is a term used in data science and transportation research to describe methods for isolating driving-related signals from heterogeneous data streams. The goal is to separate vehicle and driver dynamics, such as speed, acceleration, steering, throttle, and braking, from contextual data to enable focused analysis of driving behavior and vehicle performance.
The approach is a pipeline of data collection, alignment, denoising, and source separation or representation learning.
Applications include autonomous vehicle development, driver behavior analytics, traffic modeling, and energy-management optimization for electric vehicles.
Key challenges are privacy and data governance, variable data quality, non-uniqueness of recovered signals, and domain
The term emerged in academic and industry discussions in the early 2020s and remains a developing concept
See also: sensor fusion, blind source separation, time-series analysis.