• Skip to primary navigation
  • Skip to main content
SRI InternationalSRI mobile logo

SRI International

SRI International - American Nonprofit Research Institute

  • About
    • Blog
    • Press room
  • Expertise
    • Advanced imaging systems
    • Artificial intelligence
    • Biomedical R&D services
    • Biomedical sciences
    • Computer vision
    • Cyber & formal methods
    • Education and learning
    • Innovation strategy and policy
    • National security
    • Ocean & space
    • Quantum
    • QED-C
    • Robotics, sensors & devices
    • Speech & natural language
    • Video test & measurement
  • Ventures
  • NSIC
  • Careers
  • Contact
  • 日本支社
Show Search
Hide Search
Speech & natural language publications November 1, 2014 Conference Paper

The SRI AVEC-2014 Evaluation System

SRI International, Andreas Kathol, Colleen Richey, Dimitra Vergyri, Martin Graciarena November 1, 2014

SRI Authors: Andreas Kathol, Colleen Richey, Dimitra Vergyri, Martin Graciarena

Citation

Copy to clipboard


Mitra, V., Shriberg, E., Mitchell, M., Kathol, A., Richey, C., Vergyri, D., Graciarena, M. (2014, November). The SRI AVEC-2014 Evaluation System. Presented at the 22nd ACM International Conference on Multimedia, Orlando, FL.

Abstract

Though depression is a common mental health problem with significant impact on human society, it often goes undetected.  We explore a diverse set of features based only on spoken audio to understand which features correlate with self-reported depression scores according to the Beck depression rating scale.  These features, many of which are novel for this task, include (1) estimated articulatory trajectories during speech production, (2) acoustic characteristics, (3) acoustic-phonetic characteristics and (4) prosodic features.  Features are modeled using a variety of approaches, including support vector regression, a Gaussian backend and decision trees.  We report results on the AVEC-2014 depression dataset and find that individual systems range from 9.18 to 11.87 in root mean squared error (RMSE), and from 7.68 to 9.99 in mean absolute error (MAE).  Initial fusion brings further improvement; fusion and feature selection work is still in progress.

↓ Download

Share this

Facebooktwitterlinkedinmail

Cyber & formal methods publications, Publication, Speech & natural language publications Conference Paper

How can we help?

Once you hit send…

We’ll match your inquiry to the person who can best help you.

Expect a response within 48 hours.

Our privacy policy
Career call to action image

Make your own mark.

Search jobs
Our work

Case studies

Publications

Timeline of innovation

Areas of expertise

Blog

Institute

Leadership

Press room

Media inquiries

Compliance

Privacy policy

Careers

Job listings

Contact

SRI Ventures

Our locations

Headquarters

333 Ravenswood Ave
Menlo Park, CA 94025 USA

+1 (650) 859-2000

Subscribe to our newsletter

日本支社

SRI International

  • Privacy Policy
  • Cookies
  • DMCA
  • Copyright © 2022 SRI International