TY - GEN
T1 - Un AMT
T2 - International Conference on Computer Graphics and Interactive Techniques, SIGGRAPH 2015
AU - Kim, Jaehwan
AU - Park, Jong Youl
AU - Park, Kyoung
PY - 2015/7/31
Y1 - 2015/7/31
N2 - Unsupervised matting, whose goal is to extract interesting fore- ground components from arbitrary and natural background regions without any additional information of the contents of the corre- sponding scenes, plays an important role in many computer vision and graphics applications. Especially, the precisely extracted object images from the matting process can be useful for automatic gener- Ation of large-scale annotated training sets with more accuracy, as well as for improving the performance of a variety of applications including content-based image retrieval. However, unsupervised matting problem is intrinsically ill-posed so that it is hard to gen- erate a perfect segmented object matte from a given image with- out any prior knowledge. This additional information is usually fed by means of a trimap which is a rough pre-segmented image consisting of three subregions of foreground, background and un- known. When such matting process is applied to object collections in a large-scale image set, the requirement for manually specifying every trimap for each of independent input images can be a serious drawback definitely. Recently, automatic detection of salient object regions in images has been widely researched in computer vision tasks including image segmentation, object recognition and so on. Although there are many different types of proposal measures in methodology under the common perceptual assumption of a salient region standing out its surrounding neighbors and capturing the at- Tention of a human observer, most final saliency maps having lots of noises are not sufficient to take advantage of the consequent com- putational processes of highly accurate low-level representation of images.
AB - Unsupervised matting, whose goal is to extract interesting fore- ground components from arbitrary and natural background regions without any additional information of the contents of the corre- sponding scenes, plays an important role in many computer vision and graphics applications. Especially, the precisely extracted object images from the matting process can be useful for automatic gener- Ation of large-scale annotated training sets with more accuracy, as well as for improving the performance of a variety of applications including content-based image retrieval. However, unsupervised matting problem is intrinsically ill-posed so that it is hard to gen- erate a perfect segmented object matte from a given image with- out any prior knowledge. This additional information is usually fed by means of a trimap which is a rough pre-segmented image consisting of three subregions of foreground, background and un- known. When such matting process is applied to object collections in a large-scale image set, the requirement for manually specifying every trimap for each of independent input images can be a serious drawback definitely. Recently, automatic detection of salient object regions in images has been widely researched in computer vision tasks including image segmentation, object recognition and so on. Although there are many different types of proposal measures in methodology under the common perceptual assumption of a salient region standing out its surrounding neighbors and capturing the at- Tention of a human observer, most final saliency maps having lots of noises are not sufficient to take advantage of the consequent com- putational processes of highly accurate low-level representation of images.
UR - https://www.scopus.com/pages/publications/84959348919
U2 - 10.1145/2787626.2792644
DO - 10.1145/2787626.2792644
M3 - Conference contribution
AN - SCOPUS:84959348919
T3 - ACM SIGGRAPH 2015 Posters, SIGGRAPH 2015
BT - ACM SIGGRAPH 2015 Posters, SIGGRAPH 2015
PB - Association for Computing Machinery, Inc
Y2 - 9 August 2015 through 13 August 2015
ER -