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 depth estimation. We validate our approach through indoor and outdoor images employing a calibrated LiDAR + RGB camera asset. Experimental results highlight that our proposal enables sufficiently reliable estimation of the inter-personal distance to monitor social distancing effectively. This fact confirms that despite its intrinsic ambiguity, if appropriately driven single image depth estimation can be a viable alternative to other depth perception techniques, more expensive and not always feasible in practical applications. Our evaluation also highlights that our framework can run reasonably fast and comparably to competitors, even on pure CPU systems. Moreover, its practical deployment on low-power systems is around the corner.
翻译:最近的大流行病紧急情况在遏制病毒传播的对策方面提出了许多挑战,限制了人们之间的最小距离,从而形成了最有效的战略之一。因此,实施能够监测所谓社会距离的自主系统引起了很大兴趣。在本文件中,我们的目标是利用单一的RGB框架来应对这项任务,而无需额外的深度传感器。与在地面定位不到位时未能实现的单一图像替代方法相比,我们依靠单一图像深度估计来观察所观测到的场景的三维结构并估计人与人之间的距离。在设置阶段,一个直接的校准程序,利用即使是消费者智能手机上也可以得到的意识到的SLAM算法,使我们能够解决影响单一图像深度估计的规模模糊问题。我们的目标是利用经过校准的LIDAR + RGB 相机资产,通过室内和室外图像验证我们的方法。实验结果突出表明,我们的提案能够充分可靠地估计个人之间的距离,以有效监测社会不协调。这一事实证实,尽管其内在的模糊性,但经过适当驱动的单一图像深度估计,可以成为其他深度认知技术的可行替代方法,甚至更昂贵,而且并非始终可行地在实际的竞争竞争中进行。