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Filter Learning for Linear Structure Segmentation
2011
We introduce an approach to learning convolution filters whose joint output can be fed to a classifier that labels them as belonging to linear structures or not. The filters are learned using sparse synthesis techniques but we show that enforcing constraints is not required at run-time to achieve good classification performance. In practice, this is important as it drastically reduces the computational cost. We show that our approach outperforms the state-of-the-art on difficult, and very different, images of roads, retinal scans, and dendritic networks.
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Name
Rigamonti_TR2011_1.pdf
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openaccess
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1.06 MB
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Adobe PDF
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