TY - JOUR
T1 - Automatic salient object segmentation using saliency map and color segmentation
AU - Han, Sung Ho
AU - Jung, Gye Dong
AU - Lee, Sangh Yuk
AU - Hong, Yeong Pyo
AU - Lee, Sang Hun
PY - 2013/9
Y1 - 2013/9
N2 - A new method for automatic salient object segmentation is presented. Salient object segmentation is an important research area in the field of object recognition, image retrieval, image editing, scene reconstruction, and 2D/3D conversion. In this work, salient object segmentation is performed using saliency map and color segmentation. Edge, color and intensity feature are extracted from mean shift segmentation (MSS) image, and saliency map is created using these features. First average saliency per segment image is calculated using the color information from MSS image and generated saliency map. Then, second average saliency per segment image is calculated by applying same procedure for the first image to the thresholding, labeling, and hole-filling applied image. Thresholding, labeling and hole-filling are applied to the mean image of the generated two images to get the final salient object segmentation. The effectiveness of proposed method is proved by showing 80%, 89% and 80% of precision, recall and F-measure values from the generated salient object segmentation image and ground truth image.
AB - A new method for automatic salient object segmentation is presented. Salient object segmentation is an important research area in the field of object recognition, image retrieval, image editing, scene reconstruction, and 2D/3D conversion. In this work, salient object segmentation is performed using saliency map and color segmentation. Edge, color and intensity feature are extracted from mean shift segmentation (MSS) image, and saliency map is created using these features. First average saliency per segment image is calculated using the color information from MSS image and generated saliency map. Then, second average saliency per segment image is calculated by applying same procedure for the first image to the thresholding, labeling, and hole-filling applied image. Thresholding, labeling and hole-filling are applied to the mean image of the generated two images to get the final salient object segmentation. The effectiveness of proposed method is proved by showing 80%, 89% and 80% of precision, recall and F-measure values from the generated salient object segmentation image and ground truth image.
KW - color segmentation
KW - saliency map
KW - salient object
KW - visual attention
UR - http://www.scopus.com/inward/record.url?scp=84883889189&partnerID=8YFLogxK
U2 - 10.1007/s11771-013-1750-1
DO - 10.1007/s11771-013-1750-1
M3 - Article
AN - SCOPUS:84883889189
SN - 2095-2899
VL - 20
SP - 2407
EP - 2413
JO - Journal of Central South University
JF - Journal of Central South University
IS - 9
ER -