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Second-order Democratic Aggregation

2018-08-22ECCV 2018Unverified0· sign in to hype

Tsung-Yu Lin, Subhransu Maji, Piotr Koniusz

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Abstract

Aggregated second-order features extracted from deep convolutional networks have been shown to be effective for texture generation, fine-grained recognition, material classification, and scene understanding. In this paper, we study a class of orderless aggregation functions designed to minimize interference or equalize contributions in the context of second-order features and we show that they can be computed just as efficiently as their first-order counterparts and they have favorable properties over aggregation by summation. Another line of work has shown that matrix power normalization after aggregation can significantly improve the generalization of second-order representations. We show that matrix power normalization implicitly equalizes contributions during aggregation thus establishing a connection between matrix normalization techniques and prior work on minimizing interference. Based on the analysis we present -democratic aggregators that interpolate between sum ( =1) and democratic pooling ( =0) outperforming both on several classification tasks. Moreover, unlike power normalization, the -democratic aggregations can be computed in a low dimensional space by sketching that allows the use of very high-dimensional second-order features. This results in a state-of-the-art performance on several datasets.

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