Hand detection in cluttered scene images using Fourier-Mellin invariant features

Author

Gómez i Bigordà, Lluís

Other authors

Universitat Oberta de Catalunya

Publication date

2011-07-01T11:34:03Z

2011-07-01T11:34:03Z

2011-06-19

2011-07-26T12:35:51Z



Abstract

This paper proposes an automatic hand detection system that combines the Fourier-Mellin Transform along with other computer vision techniques to achieve hand detection in cluttered scene color images. The proposed system uses the Fourier-Mellin Transform as an invariant feature extractor to perform RST invariant hand detection. In a first stage of the system a simple non-adaptive skin color-based image segmentation and an interest point detector based on corners are used in order to identify regions of interest that contains possible matches. A sliding window algorithm is then used to scan the image at different scales performing the FMT calculations only in the previously detected regions of interest and comparing the extracted FM descriptor of the windows with a hand descriptors database obtained from a train image set. The results of the performed experiments suggest the use of Fourier-Mellin invariant features as a promising approach for automatic hand detection.

Document Type

Master thesis

Language

English

Subjects and keywords

Automatic hand detection; Fourier-Mellin Transform; RST-invariant object representation

Publisher

Universitat Oberta de Catalunya

Rights

NO

This item appears in the following Collection(s)