Home News About Us Contact Contributors Disclaimer Privacy Policy Help FAQ

Home
Search
Quick Search
Advanced
Fulltext
Browse
Collections
Persons
My eDoc
Session History
Login
Name:
Password:
Documentation
Help
Support Wiki
Direct access to
document ID:


          Institute: MPI für Informatik     Collection: Computer Graphics Group     Display Documents



  history
ID: 618894.0, MPI für Informatik / Computer Graphics Group
Hand shape recognition using a ToF camera : an application to sign language
Authors:Simonovsky, Martin
Language:English
Date of Approval (YYYY-MM-DD):2011-03-30
Type of Thesis (e.g.Diploma):master
Name of University:Universität des Saarlandes
Place of University:Saarbrücken
Audience:Experts Only
Abstract / Description:This master's thesis investigates the benefit of utilizing depth
information acquired by a time-of-flight (ToF) camera for hand shape
recognition from unrestricted viewpoints. Specifically, we assess the
hypothesis that classical 3D content descriptors might be
inappropriate for ToF depth images due to the 2.5D nature and
noisiness of the data and possible expensive computations in 3D space.
Instead, we extend 2D descriptors to make use of the additional
semantics of depth images. Our system is based on the appearance-based
retrieval paradigm, using a synthetic 3D hand model to generate its
database. The system is able to run at interactive frame rates. For
increased robustness, no color, intensity, or time coherence
information is used. A novel, domain-specific algorithm for segmenting
the forearm from the upper body based on reprojecting the acquired
geometry into the lateral view is introduced. Moreover, three kinds of
descriptors exploiting depth data are proposed and the made design
choices are experimentally supported. The whole system is then
evaluated on an American sign language fingerspelling dataset.
However, the retrieval performance still leaves room for improvements.
Several insights and possible reasons are discussed.
Last Change of the Resource (YYYY-MM-DD):2012-03-22
Document Type:Thesis
Communicated by:Hans-Peter Seidel
Affiliations:MPI für Informatik/Computer Graphics Group
Identifiers:LOCALID:C125675300671F7B-F6F3ECA002CC444FC1257970006B4EF3-...
The scope and number of records on eDoc is subject to the collection policies defined by each institute - see "info" button in the collection browse view.