2021 IEEE International Intelligent Transportation Systems Conference (ITSC) 2021
DOI: 10.1109/itsc48978.2021.9564822
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Optimal Placement of Roadside Infrastructure Sensors towards Safer Autonomous Vehicle Deployments

Abstract: Vehicles with driving automation are increasingly being developed for deployment across the world. However, the onboard sensing and perception capabilities of such automated or autonomous vehicles (AV) may not be sufficient to ensure safety under all scenarios and contexts. Infrastructure-augmented environment perception using roadside infrastructure sensors can be considered as an effective solution, at least for selected regions of interest such as urban road intersections or curved roads that present occlus… Show more

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Cited by 19 publications
(13 citation statements)
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“…Because of the user-defined 3D geometry's inflexibility in modeling diverse scenarios, the majority of 3D studies optimized visual sensors' placement on the simulation platform including Autodesk Revit López et al, 2023), Autodesk CAD (Rougeron et al, 2022), RoadRunner (Vijay et al, 2021), Unity (Jin et al, 2022), Unreal (Hermann et al, 2022), and CARLA (Cai et al, 2023;Qu et al, 2023), as noted in Table 1. The advantages of simulation software are twofold: (1) Users can create customized scenarios by assembling 3D models provided in the software and (2) the built-in ray-casting algorithms Kim & Park, 2019;Chen, Zhu, et al, 2021;Vijay et al, 2021;Hermann et al, 2022;Rougeron et al, 2022;Qu et al, 2023; for rendering make it easier to emulate sensors' data capturing.…”
Section: Scenario Definition and Sensor Modelingmentioning
confidence: 99%
“…Because of the user-defined 3D geometry's inflexibility in modeling diverse scenarios, the majority of 3D studies optimized visual sensors' placement on the simulation platform including Autodesk Revit López et al, 2023), Autodesk CAD (Rougeron et al, 2022), RoadRunner (Vijay et al, 2021), Unity (Jin et al, 2022), Unreal (Hermann et al, 2022), and CARLA (Cai et al, 2023;Qu et al, 2023), as noted in Table 1. The advantages of simulation software are twofold: (1) Users can create customized scenarios by assembling 3D models provided in the software and (2) the built-in ray-casting algorithms Kim & Park, 2019;Chen, Zhu, et al, 2021;Vijay et al, 2021;Hermann et al, 2022;Rougeron et al, 2022;Qu et al, 2023; for rendering make it easier to emulate sensors' data capturing.…”
Section: Scenario Definition and Sensor Modelingmentioning
confidence: 99%
“…Identifying the location of RSPUs and their sensors is a major problem in this context, as their optimal placement can drastically improve safety and reduce cost (e.g., procurement, installation, and maintenance). Many studies aim to optimize coverage [9], [10]. To achieve this, some authors consider probabilistic coverage, introducing probabilistic sensor models [11]- [13].…”
Section: Related Workmentioning
confidence: 99%
“…Moreover, we experimented with RSPU positioning, and simplified the experiment set by considering only optimal placements (refer [10] for details) that actually help overcome the occlusion. Without this step, there could be redundant RSPU placements and coPEM configurations that may result in the same or similar AV behavior as with the regular PEM configurations (non-cooperative perception).…”
Section: B Test Cases and Preliminary Explorationmentioning
confidence: 99%
“…Coverage is estimated with raytracing to optimize an infrastructure sensor setup for surveillance by Altahir et al [4] and for vehicle-to-everything (V2X) by Vijay et al [5]. They define coverage as the percentage of sensors that can see any given point on the surface.…”
Section: A Visibility Estimation For Cameras and Sensor Networkmentioning
confidence: 99%