Logo Recognition Using Bundle Min-hashing
نویسندگان
چکیده
• The objective is to identify brand logos from given set of images. The dataset consists of various images of objects bearing the logos. We first look for logo in the image and then try to classify it to a particular brand name. • The technique is invariant to scale and builds an index using min-Hashing on the feature bundles. The feature bundles are formed using the spatial location and the visual word features. • The idea is that these bundled features contain more information than a single feature.
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