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SBIR Fiscal Year 2024.2 Awards: Complete Streets Artificial Intelligence Initiative

Project Title Small Business Information
Artificial Intelligence Approach to Generate and Analyze Complete Streets Data at Scale Aiwaysion, Inc. - Seattle, WA
PI Name: Wei Sun
PI Email: wsun@aiwaysion.com

Data Processing and Analysis Framework for Infrastructure Planning to Promote Active Transport

Creare LLC – Hanover, NH
PI Name: Mattheus Ueckermann
PI Email: mpu@creare.com

Scalable and Sustainable AI Solutions for Complete Streets Data Creation and Maintenance with Off-the Shelf Dash Cams

JC-TECHS Corp. – University Place, WA
PI Name: Wei Cheng
PI Email: contact@jc-techs.com
 

Safe Routes for All (SR4A) - Using AI-Based Image Recognition and Machine Learning Algorithms for Network-Wide Assessment and Routing of Multimodal Trips Based on Level of Traffic Stress Kittelson and Associates – Wilmington, NC
PI Name: Bastian Schroeder
PI Email: bschroeder@kittelson.com
 
Complete Urban To Rural Balanced Streets By Artificial Intelligence Design (CURBS-AID) Kitware, Inc. – Clifton Park, NY
PI Name: Connor Greenwell
PI Email: connor.greenwell@kitware.com
 
Safe Accessible Multimodal Mobility Intelligence (SAMMI) for All Road Users Numobility LLC – Atlanta, GA
PI Name: Ximon Zhu
PI Email: ximon@numobility.ai
AI for City OpalAI Inc. – Beverly Hills, CA
PI Name: Ryan Alimo
PI Email: ryan@opal-ai.com
CSAI Phase I - Skylite Group Skylite Group – Bethesda, MD
PI Name: Eugene Polishchuk
PI Email: eugene@skylitelabs.com
AI for Complete Equitable Streets (ACES): Using Computer Vision and Machine Learning to Deliver Data-Driven Guidance for Complete Streets State of Place – Natick, MA
PI Name: Mariela Alfonzo
PI Email: mariela@stateofplace.co
 
Complete Pavement Markings for Safe and Complete Streets TrAnalytics LLC – Bedford, MA
PI Name: David Raucci
PI Email: draucci@tranalytics.us
Informing Infrastructure Interventions via Novel Near-Miss Data Collection VELO.AI, INC. – Pittsburgh, PA
PI Name: Galen Clark Haynes
PI Email: gch@velo.ai
Complete Street Data Collection and Assessment using Machine Vision WCEC Engineers, Inc. – Salt Lake City, UT
PI Name: Clancy Black
PI Email: clancy.black@wcg.us