Pedestrian Motion Direction Estimation Using Simulated Automotive MIMO Radar
Petro Khomchuk, Inna Stainvas, Igal Bilik

TL;DR
This paper introduces a novel MIMO radar-based method for estimating pedestrian motion direction using micro-Doppler signatures, achieving high accuracy in simulated urban scenarios to enhance vehicle safety systems.
Contribution
It presents a new approach combining sparse dictionary learning and supervised regression to accurately estimate pedestrian movement direction from radar data.
Findings
Direction estimation error less than 10° in 95% of cases
Effective in simulated scenarios at 100m range
Utilizes advanced feature extraction and regression techniques
Abstract
Micro-Doppler-based target classification capabilities of the automotive radars can provide high reliability and short latency to the future active safety automotive features. A large number of pedestrians surrounding vehicle in practical urban scenarios mandate prioritization of their treat level. Classification between relevant pedestrians that cross the street or are within the vehicle path and those that are on the sidewalks and move along the vehicle rout can significantly minimize a number of vehicle-to-pedestrian accidents. This work proposes a novel technique for a pedestrian direction of motion estimation which treats pedestrians as complex distributed targets and utilizes their micro-Doppler (MD) radar signatures. The MD signatures are shown to be indicative of pedestrian direction of motion, and the supervised regression is used to estimate the mapping between the…
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