Published March 30, 2023 | Version v1
Dataset Open

StreetAware: A High-Resolution Synchronized Multimodal Urban Scene Dataset

Project leader:
Silva, Claudio1 ORCID icon
  • 1. ROR icon New York University

Description

Access to high-quality data is an important barrier in the digital analysis of urban settings, including applications within computer vision and urban design. Diverse forms of data collected from sensors at areas of high activity in the urban environment, such as street intersections, are thus a valuable resource for researchers interpreting the dynamics between vehicles, pedestrians, and the built environment. We present a high-resolution audio, video, and LiDAR dataset of three urban intersections in Brooklyn, New York, totaling approximately 8 unique hours. The data is collected with custom Reconfigurable Environmental Intelligence Platform (REIP) sensors that are designed with the ability to accurately synchronize multiple video and audio inputs.

Access the data files

Due to the size (~550 GB) and complexity of the data, you must access it via Globus: https://app.globus.org/file-manager?origin_id=c43d41ac-d286-4ac4-9318-3d65f3d9b855&origin_path=%2Fq1byv-qc065-streetaware%2F. The README file explains the contents further.

Files

park_map.pdf
Files (3.4 MB)
Name Size
md5:60d41cd593802ef4a78acc4b5ab45381
810.6 kB Preview Download
md5:9601b708da26c9f5c7eb94373e4f3755
4.4 kB Preview Download
md5:a0231b8607619b86836b5bff67037379
612.8 kB Preview Download
md5:27692de72b851bf66e640d6df1722bcd
632.3 kB Preview Download
md5:3afd3c08f245194b097181fcb07a163f
1.3 MB Preview Download

Additional details

Created:
March 31, 2023
Modified:
April 24, 2023