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Asymmetric Sparse Kernel Approximations for Large-scale Visual Search

2014-06-01CVPR 2014Unverified0· sign in to hype

Damek Davis, Jonathan Balzer, Stefano Soatto

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Abstract

We introduce an asymmetric sparse approximate embedding optimized for fast kernel comparison operations arising in large-scale visual search. In contrast to other methods that perform an explicit approximate embedding using kernel PCA followed by a distance compression technique in R^d, which loses information at both steps, our method utilizes the implicit kernel representation directly. In addition, we empirically demonstrate that our method needs no explicit training step and can operate with a dictionary of random exemplars from the dataset. We evaluate our method on three benchmark image retrieval datasets: SIFT1M, ImageNet, and 80M-TinyImages.

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