{"id":1187,"date":"2012-06-07T18:52:53","date_gmt":"2012-06-07T18:52:53","guid":{"rendered":"http:\/\/eccv2012.unifi.it\/?page_id=1187"},"modified":"2012-09-30T22:25:31","modified_gmt":"2012-09-30T22:25:31","slug":"modern-features-advances-applications-and-software","status":"publish","type":"page","link":"http:\/\/eccv2012.unifi.it\/program\/tutorials\/modern-features-advances-applications-and-software\/","title":{"rendered":"Modern features: advances, applications, and software"},"content":{"rendered":"
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Organizers<\/strong>: Andrea Vedaldi\u00a0(Univ. of Oxford, UK)<\/em>,\u00a0Jiri Matas, Krystian Mikolajczyk, Tinne Tuytelaars, Cordelia Schmid, Andrew Zisserman\u00a0(Univ. of Oxford, UK)<\/em> Outline<\/strong>:<\/p>\n Course website:\u00a0<\/strong>https:\/\/sites.google.com\/site\/eccv12features\/<\/a><\/p>\n Material<\/strong>:<\/p>\n <\/p>\n","protected":false},"excerpt":{"rendered":" Organizers: Andrea Vedaldi\u00a0(Univ. of Oxford, UK),\u00a0Jiri Matas, Krystian Mikolajczyk, Tinne Tuytelaars, Cordelia Schmid, Andrew Zisserman\u00a0(Univ. of Oxford, UK) Duration: half day Abstract:\u00a0This course will introduce local feature detectors and descriptors as foundational tools in a variety of state-of-the-art computer … Continue reading
\nDuration<\/strong>: half day
\nAbstract<\/strong>:\u00a0This course will introduce local feature detectors and descriptors as foundational tools in a variety of state-of-the-art computer vision applications. The first part of the tutorial will cover popular co-variant detectors (Harris, Laplacian, Hessian corners and blobs, scale and affine adaptation, MSER, SURF, FAST, etc.) and descriptors (SIFT, SURF, BRIEF, LIOP, etc.), with a particular emphasis on recent advances and additions to this set of tools. It will be shown how the various methods achieve different trade-offs in repeatability, speed, geometric accuracy, and applicability to different image contents in term of their performance in benchmarks and applications (tracking, reconstruction, retrieval, stitching, text detection in the wild, etc.). The second part of the tutorial will review software for computing local features and evaluating their performance automatically on benchmark data. In particular, two software resources will be introduced to the community for the first time: a novel extension to the popular open-source VLFeat library containing new reference implementations of co-variant feature detectors; and a novel benchmarking software superseding standard packages for the evaluation of co-variant feature detectors and descriptors.<\/p>\n\n
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