Robust noise region-based active contour model via local similarity factor for image segmentation
2016; Elsevier BV; Volume: 61; Linguagem: Inglês
10.1016/j.patcog.2016.07.022
ISSN1873-5142
AutoresSijie Niu, Qiang Chen, Luís de Sisternes, Zexuan Ji, Zeming Zhou, Daniel L. Rubin,
Tópico(s)Image Retrieval and Classification Techniques
ResumoImage segmentation using a region-based active contour model could present difficulties when its noise distribution is unknown. To overcome this problem, this paper proposes a novel region-based model for the segmentation of objects or structures in images by introducing a local similarity factor, which relies on the local spatial distance within a local window and local intensity difference to improve the segmentation results. By using this local similarity factor, the proposed method can accurately extract the object boundary while guaranteeing certain noise robustness. Furthermore, the proposed algorithm completely avoids the pre-processing steps typical of region-based contour model segmentation, resulting in a higher preservation of image details. Experiments performed on synthetic images and real word images demonstrate that the proposed algorithm, as compared with the state-of-art algorithms, is more efficient and robust to higher noise level manifestations in the images.
Referência(s)