| Literature DB >> 33777591 |
Mehran Javanmardi1, Dina Huang2, Pallavi Dwivedi2, Sahil Khanna3, Kim Brunisholz4, Ross Whitaker1, Quynh Nguyen2, Tolga Tasdizen1.
Abstract
Deep learning and, specifically, convoltional neural networks (CNN) represent a class of powerful models that facilitate the understanding of many problems in computer vision. When combined with a reasonable amount of data, CNNs can outperform traditional models for many tasks, including image classification. In this work, we utilize these powerful tools with imagery data collected through Google Street View images to perform virtual audits of neighborhood characteristics. We further investigate different architectures for chronic disease prevalence regression through networks that are applied to sets of images rather than single images. We show quantitative results and demonstrate that our proposed architectures outperform the traditional regression approaches.Entities:
Keywords: Chronic Disease Prevalence; Google Street View Images; Multi-Task Learning; Permutation Invariant Network; Set Regression
Year: 2019 PMID: 33777591 PMCID: PMC7996469 DOI: 10.1109/access.2019.2960010
Source DB: PubMed Journal: IEEE Access ISSN: 2169-3536 Impact factor: 3.367