Ph.D. Dissertation Defense - Chieh-Feng Cheng

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Event Details
  • Date/Time:
    • Thursday November 21, 2019 - Friday November 22, 2019
      10:00 am - 11:59 am
  • Location: Room C1115, CODA
  • Phone:
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  • Email:
  • Fee(s):
    N/A
  • Extras:
Contact
No contact information submitted.
Summaries

Summary Sentence: Audio Classification and Event Detection Based on Small-size Weakly Labeled Data

Full Summary: No summary paragraph submitted.

TitleAudio Classification and Event Detection Based on Small-size Weakly Labeled Data

Committee:

Dr. David Anderson, ECE, Chair , Advisor

Dr. Mark Davenport, ECE, Co-Advisor

Dr. Eva Dyer, ECE

Dr. Ghassan AlRegib, ECE

Dr. Elliot Moore, ECE

Dr. Abbas Rashidi, CEE

Abstract:

The objective of this research is to perform audio event detection and classification using small-size weakly labeled data. Although audio event detection has been studied for years, the research on this topic using weakly labeled data is limited. Many sources of multimedia data lack detailed annotation and rather have only high-level meta-data describing the main content of various long segments of the data. In this research, we illustrate a novel framework to perform audio classification when working with such weakly labeled data, especially when dealing with small-size datasets. Traditional approaches to this problem are to use techniques for strongly labeled data and then to deal with the weak nature of the labels via post-processing. In contrast, our approach directly addresses the weakly labeled aspect of the data by classifying longer windows of data based on the clustering behavior of the acoustic features over time. We evaluate our framework using both synthetic datasets and real data and demonstrate that our method works well under both situations. Also, it outperforms other existing methods when using small size datasets.

Additional Information

In Campus Calendar
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Groups

ECE Ph.D. Dissertation Defenses

Invited Audience
Public
Categories
Other/Miscellaneous
Keywords
Phd Defense, graduate students
Status
  • Created By: Daniela Staiculescu
  • Workflow Status: Published
  • Created On: Nov 6, 2019 - 2:48pm
  • Last Updated: Nov 6, 2019 - 3:53pm