Foreground Focus : Finding Meaningful Features in Unlabeled
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چکیده
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منابع مشابه
Foreground Focus: Finding Meaningful Features in Unlabeled Images
We present a method to automatically discover meaningful features in unlabeled image collections. Each image is decomposed into semi-local features that describe neighborhood appearance and geometry. The goal is to determine for each image which of these parts are most relevant, given the image content in the remainder of the collection. Our method first computes an initial image-level grouping...
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