This paper presents a framework for enhancing occupancy sensing performance using Doppler radar and machine learning. It addresses the limitations of conventional occupancy sensors and proposes a robust mathematical model for feature extraction to improve event classification. The study also explores various implemented strategies to optimize the sensing process while minimizing computational complexity.