Monitoring social distancing with single image depth estimation
Alessio Mingozzi, Andrea Conti, Filippo Aleotti, Matteo Poggi, Stefano, Mattoccia

TL;DR
This paper presents a method for monitoring social distancing using single RGB images and depth estimation, enabling effective distance measurement without additional sensors, suitable for practical deployment.
Contribution
It introduces a novel approach leveraging single image depth estimation with a simple calibration, enabling reliable social distance monitoring without extra hardware.
Findings
Effective distance estimation in indoor and outdoor scenes
Comparable performance to existing methods on CPU systems
Potential for deployment on low-power devices
Abstract
The recent pandemic emergency raised many challenges regarding the countermeasures aimed at containing the virus spread, and constraining the minimum distance between people resulted in one of the most effective strategies. Thus, the implementation of autonomous systems capable of monitoring the so-called social distance gained much interest. In this paper, we aim to address this task leveraging a single RGB frame without additional depth sensors. In contrast to existing single-image alternatives failing when ground localization is not available, we rely on single image depth estimation to perceive the 3D structure of the observed scene and estimate the distance between people. During the setup phase, a straightforward calibration procedure, leveraging a scale-aware SLAM algorithm available even on consumer smartphones, allows us to address the scale ambiguity affecting single image…
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Taxonomy
TopicsAdvanced Vision and Imaging · Robotics and Sensor-Based Localization · Advanced Optical Sensing Technologies
