NS
Neda Sepasian
4 records found
1
Authored
Accurate segmentation of brain white matter hyperintensities (WMHs) is important for prognosis and disease monitoring. To this end, classifiers are often trained – usually, using T1 and FLAIR weighted MR images. Incorporating additional features, derived from diffusion weighted M
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Contributed
Predicting track quality using structural elements and relative track geometry data measured by RILA
A Machine Learning Classification approach
Track quality measures differ from standard to standard. Widely used indices for track quality are the standard deviations of the rail longitudinal level data and the standard deviations of alignment data. Researchers have opted for various learning methods as to relate track qua
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The explosion of video data in surveillance calls for large amount of annotated datasets that could be used for information retrieval, learning-based network training and algorithms evaluation phase. A number of annotated video
datasets have been shared to public, however, th ...
datasets have been shared to public, however, th ...