TY - GEN
T1 - An accurate hand segmentation approach using a structure based shape localization technique
AU - Saavedra, Jose M.
AU - Bustos, Benjamin
AU - Chang, Violeta
PY - 2013
Y1 - 2013
N2 - Hand segmentation is an important stage for a variety of applications such as gesture recognition and biometrics. The accuracy of the hand segmentation process becomes more critical in applications that are based on hand measurements as in the case of biometrics. In this paper, we present a very accurate hand segmentation technique, relying on both hand localization and color information. First, our proposal locates a hand on an input image, the hand location is then used to extract a training region which will play a critical role for segmenting the whole hand in an accurate way. We use a structure-based method (STELA), originally proposed for 3D model retrieval, for the hand localization stage. STELA exploits not only locality but also structural information of the hand image and does not require a large image collection for training. Second, our proposal separates the hand region from the background using the color information captured from the training region. In this way, the segmentation depends only on the user skin color. This segmentation approach allows us to handle a variety of skin colors and illumination conditions. In addition, our proposal is characterized by being fully automatic, where a user calibration stage is not required. Our results show a 100% in the hand localization process under different kinds of images and a very accurate hand segmentation achieving over 90% of correct segmentation at the expense of having only 5% for false positives.
AB - Hand segmentation is an important stage for a variety of applications such as gesture recognition and biometrics. The accuracy of the hand segmentation process becomes more critical in applications that are based on hand measurements as in the case of biometrics. In this paper, we present a very accurate hand segmentation technique, relying on both hand localization and color information. First, our proposal locates a hand on an input image, the hand location is then used to extract a training region which will play a critical role for segmenting the whole hand in an accurate way. We use a structure-based method (STELA), originally proposed for 3D model retrieval, for the hand localization stage. STELA exploits not only locality but also structural information of the hand image and does not require a large image collection for training. Second, our proposal separates the hand region from the background using the color information captured from the training region. In this way, the segmentation depends only on the user skin color. This segmentation approach allows us to handle a variety of skin colors and illumination conditions. In addition, our proposal is characterized by being fully automatic, where a user calibration stage is not required. Our results show a 100% in the hand localization process under different kinds of images and a very accurate hand segmentation achieving over 90% of correct segmentation at the expense of having only 5% for false positives.
KW - Color based segmentation
KW - Hand localization
KW - Hand segmentation
KW - Local descriptors
UR - http://www.scopus.com/inward/record.url?scp=84878249062&partnerID=8YFLogxK
M3 - Conference contribution
AN - SCOPUS:84878249062
SN - 9789898565471
T3 - VISAPP 2013 - Proceedings of the International Conference on Computer Vision Theory and Applications
SP - 321
EP - 326
BT - VISAPP 2013 - Proceedings of the International Conference on Computer Vision Theory and Applications
T2 - 8th International Conference on Computer Vision Theory and Applications, VISAPP 2013
Y2 - 21 February 2013 through 24 February 2013
ER -