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Article
Seeing Human Weight from a Single RGB-D Image
Journal of Computer Science and Technology
  • Tam Nguyen, University of Dayton
  • Jiashi Feng, University of California - Berkeley
  • Shuicheng Yan, National University of Singapore
Document Type
Article
Publication Date
9-1-2014
Abstract

Human weight estimation is useful in a variety of potential applications, e.g., targeted advertisement, entertainment scenarios and forensic science. However, estimating weight only from color cues is particularly challenging since these cues are quite sensitive to lighting and imaging conditions. In this article, we propose a novel weight estimator based on a single RGB-D image, which utilizes the visual color cues and depth information. Our main contributions are three-fold.

First, we construct the W8-RGBD dataset including RGB-D images of different people with ground truth weight.

Second, the novel sideview shape feature and the feature fusion model are proposed to facilitate weight estimation. Additionally, we consider gender as another important factor for human weight estimation.

Third, we conduct comprehensive experiments using various regression models and feature fusion models on the new weight dataset, and encouraging results are obtained based on the proposed features and models.

Inclusive pages
777–784
ISBN/ISSN
1000-9000
Document Version
Postprint
Comments

The document is available for download is the authors' accepted manuscript, provided in compliance with the publisher's policy on self-archiving. Differences may exist between this document and the published version, which is available using the link provided. Permission documentation is on file.

Publisher
Springer
Peer Reviewed
Yes
Citation Information
Tam Nguyen, Jiashi Feng and Shuicheng Yan. "Seeing Human Weight from a Single RGB-D Image" Journal of Computer Science and Technology Vol. 29 Iss. 5 (2014)
Available at: http://works.bepress.com/tam-nguyen/21/