Author of the publication

MS lesion segmentation using a multi-channel patch-based approach with spatial consistency.

, , and . Medical Imaging: Image Processing, volume 9413 of SPIE Proceedings, page 94130O. SPIE, (2015)

Please choose a person to relate this publication to

To differ between persons with the same name, the academic degree and the title of an important publication will be displayed. You can also use the button next to the name to display some publications already assigned to the person.

No persons found for author name Greenspan, Hayit
add a person with the name Greenspan, Hayit
 

Other publications of authors with the same name

Unsupervised Image Clustering Using the Information Bottleneck Method., , and . DAGM-Symposium, volume 2449 of Lecture Notes in Computer Science, page 158-165. Springer, (2002)Finding Pictures of Objects in Large Collections of Images., , , , , , and . Data Processing Clinic, GSLIS Publications, (1996)A multi-view deep learning architecture for classification of breast microcalcifications., , and . ISBI, page 726-730. IEEE, (2016)Evaluation of uterine cervix segmentations using ground truth from multiple experts., , , , , and . Comput. Medical Imaging Graph., 33 (3): 205-216 (2009)Supervised Domain Adaptation by transferring both the parameter set and its gradient., , and . Neurocomputing, (December 2023)Modeling the Intra-class Variability for Liver Lesion Detection Using a Multi-class Patch-Based CNN., , , , , and . Patch-MI@MICCAI, volume 10530 of Lecture Notes in Computer Science, page 129-137. Springer, (2017)A Probabilistic Framework for Spatio-Temporal Video Representation & Indexing., , and . ECCV (4), volume 2353 of Lecture Notes in Computer Science, page 461-475. Springer, (2002)Joint Liver Lesion Segmentation and Classification via Transfer Learning., and . CoRR, (2020)Deep Feature Learning from a Hospital-Scale Chest X-ray Dataset with Application to TB Detection on a Small-Scale Dataset., and . EMBC, page 4076-4079. IEEE, (2019)A review of deep learning in medical imaging: Image traits, technology trends, case studies with progress highlights, and future promises., , , , , , , , and . CoRR, (2020)