improving pedestrian infrastructure inventory in ... · statewide pedestrian infrastructure...

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Verify sidewalk location Update 10-ft. sidewalk width Update 10-ft. cross slope Update 40-ft. grade Verify curb ramp locations Update curb ramp approach slope Improving Pedestrian Infrastructure Inventory in Massachusetts using Mobile LiDAR Chengbo Ai, Principal Investigator; Qing Hou, Graduate Research Assistant Department of Civil and Environmental Engineering, University of Massachusetts Amherst Problem Statement Pedestrian infrastructure is one of the most vital infrastructures for pedestrians and wheelchair users to facilitate safe and uninterrupted trips in their everyday lives. To meet the obligations of the ADA Transition Plan, and to make informed investment decisions in transportation asset management, MassDOT is responsible for their timely maintenance of inadequate sidewalks in its jurisdiction. Through its goals and policies, MassDOT is seeking to provide all modes of transportation with equitable accommodations. Methodology Additional Information Results and Findings However, the current sidewalk inventory data resides within MassDOT is not of a quality or level of detail to make informed decisions. The previous effort has been made to inventory the critical pedestrian infrastructure. However, most of the effort still included a large amount of manual process, and yet did not take advantage of the widely available LiDAR data. This research project seeks to demonstrate and evaluate the feasibility of mobile LiDAR system as a viable technology to facilitate cost-effective inventory update and condition assessment for pedestrian facilities within the Commonwealth. With the identified locations and the embedded measurements, the derived database from the mobile LiDAR can be integrated with the existing road inventory seamlessly, which will provide MassDOT with accurate information from which to prioritize sidewalk maintenance needs. Automated LiDAR point cloud segmentation Objective Automated sidewalk and curb ramp extraction The proposed method demonstrated that mobile LiDAR is cost-effective for network-level pedestrian infrastructure analysis through a case study, covering the entire State Route 9 corridor (271.76 miles) Processed more than 8 billion LiDAR points Extracted 85 miles of sidewalks and conducted the corresponding measurements at 7 min/mile Extracted/updated 1,297 curb ramps and conducted the corresponding measurements at 2.2 min/mile This project was conducted as part of the MassDOT Research Program with funding from FHWA SPR funds. For more information, please contact Dr. Lily Oliver, Manager of Research, ( hongyan [email protected]), and Dr. Chengbo Ai, Principal Investigator, ( chengbo [email protected]). The research team also developed a complete point cloud data processing pipeline (e.g., tools, algorithms, GUIs and procedures) that can facilitate the implementations of a statewide pedestrian infrastructure inventory and many other transportation assets inventories. The point cloud segmentation method employs the deep learning-based approach, i.e., PointNet++, to decompose the large-scale, raw point cloud data into feature-rich, meaningful groups so that the subsequent sidewalk extraction algorithms can be applied efficiently. The sidewalk extraction method employs an efficient coplanar identification approach using Principal Component Analysis and Octree. The algorithm is sequentially applied to 3-ft. LiDAR stripe along the driving direction. The curb ramp extraction method employs an image-based, Deformable Part Model to identify the individual parts of a curb ramp, and then project the results to the LiDAR based on tight image-LiDAR registration. The final report of this research project is available at https ://www.mass.gov/lists/current-and-completed-research-projects

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Page 1: Improving Pedestrian Infrastructure Inventory in ... · statewide pedestrian infrastructure inventory and many other transportation assets inventories. The point cloud segmentation

• Verify sidewalk location• Update 10-ft. sidewalk width• Update 10-ft. cross slope• Update 40-ft. grade

• Verify curb ramp locations• Update curb ramp approach slope

Improving Pedestrian Infrastructure Inventory in Massachusetts using Mobile LiDARChengbo Ai, Principal Investigator; Qing Hou, Graduate Research Assistant

Department of Civil and Environmental Engineering, University of Massachusetts Amherst

Problem Statement

Pedestrian infrastructure is one of the most vitalinfrastructures for pedestrians and wheelchairusers to facilitate safe and uninterrupted trips intheir everyday lives. To meet the obligations ofthe ADA Transition Plan, and to make informedinvestment decisions in transportation assetmanagement, MassDOT is responsible for theirtimely maintenance of inadequate sidewalks inits jurisdiction. Through its goals and policies,MassDOT is seeking to provide all modes oftransportation with equitable accommodations.

Methodology

Additional Information

Results and Findings

However, the current sidewalk inventory dataresides within MassDOT is not of a quality orlevel of detail to make informed decisions. Theprevious effort has been made to inventory thecritical pedestrian infrastructure. However, mostof the effort still included a large amount ofmanual process, and yet did not take advantageof the widely available LiDAR data.

This research project seeks to demonstrate andevaluate the feasibility of mobile LiDAR system asa viable technology to facilitate cost-effectiveinventory update and condition assessment forpedestrian facilities within the Commonwealth.With the identified locations and the embeddedmeasurements, the derived database from themobile LiDAR can be integrated with the existingroad inventory seamlessly, which will provideMassDOT with accurate information from whichto prioritize sidewalk maintenance needs.

Automated LiDAR point cloud segmentation

Objective

Automated sidewalk and curb ramp extraction

The proposed method demonstrated that mobile LiDAR iscost-effective for network-level pedestrian infrastructureanalysis through a case study, covering the entire StateRoute 9 corridor (271.76 miles)

• Processed more than 8 billion LiDAR points

• Extracted 85 miles of sidewalks and conducted thecorresponding measurements at 7 min/mile

• Extracted/updated 1,297 curb ramps and conductedthe corresponding measurements at 2.2 min/mile

This project was conducted as part of the MassDOTResearch Program with funding from FHWA SPR funds. Formore information, please contact Dr. Lily Oliver, Managerof Research, ([email protected]), and Dr. ChengboAi, Principal Investigator, ([email protected]).

The research team also developed a complete point clouddata processing pipeline (e.g., tools, algorithms, GUIs andprocedures) that can facilitate the implementations of astatewide pedestrian infrastructure inventory and manyother transportation assets inventories.

The point cloud segmentation method employs the deep learning-basedapproach, i.e., PointNet++, to decompose the large-scale, raw point clouddata into feature-rich, meaningful groups so that the subsequent sidewalkextraction algorithms can be applied efficiently.

The sidewalk extraction method employs an efficient coplanar identificationapproach using Principal Component Analysis and Octree. The algorithm issequentially applied to 3-ft. LiDAR stripe along the driving direction.

The curb ramp extraction method employs an image-based, DeformablePart Model to identify the individual parts of a curb ramp, and then projectthe results to the LiDAR based on tight image-LiDAR registration.

The final report of this research project is available athttps://www.mass.gov/lists/current-and-completed-research-projects