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Please use this identifier to cite or link to this item: http://arks.princeton.edu/ark:/88435/dsp01vx021h833
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dc.contributor.advisorSeung, H. Sebastian-
dc.contributor.authorMitchell, Eric-
dc.date.accessioned2018-08-14T17:52:52Z-
dc.date.available2018-08-14T17:52:52Z-
dc.date.created2018-05-15-
dc.date.issued2018-08-14-
dc.identifier.urihttp://arks.princeton.edu/ark:/88435/dsp01vx021h833-
dc.description.abstractIn this work, we present DeepAlign, a new neural network architecture and training paradigm for learning optical flow for the application of image alignment. The pri- mary novelty of our architecture is the replacement of naive downsampling in other spatial pyramid network architectures such as SpyNet [23, 30] with a hierarchical encoding pathway that we propose generates more information-dense inputs for flow estimation. We demonstrate DeepAlign to be superior in performance to similar architectures for learning optical flow on our particular image alignment task, the alignment of large volumes of electron microscopy (EM) imagery. This type of large- scale alignment task is a common preprocessing step for many biomedical research efforts, and a fast, accurate method for this task would have broad applicability. We quantitatively and qualitatively compare the quality of our system with SpyNet, as well as with a standard non-deep learning approach, called Alembic, which has been demonstrated to be effective at large-scale EM alignment. We show promising results for DeepAlign on the Pinky40 EM dataset, with superior average-case performance to both Alembic and SpyNet. However, we also note that the worst-case performance of DeepAlign, though superior to SpyNet, is not yet comparable enough to Alembic to warrant its replacement. We conclude with several suggestions for how to close this performance gap.en_US
dc.format.mimetypeapplication/pdf-
dc.language.isoenen_US
dc.titleDeepAlign: Learning Optical Flow for Image Alignmenten_US
dc.typePrinceton University Senior Theses-
pu.date.classyear2018en_US
pu.departmentComputer Scienceen_US
pu.pdf.coverpageSeniorThesisCoverPage-
pu.contributor.authorid960835718-
Appears in Collections:Computer Science, 1988-2020

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