Compact Bilinear Pooling
Abstract
Bilinear models has been shown to achieve impressive performance on a wide range of visual tasks, such as semantic segmentation, fine grained recognition and face recognition. However, bilinear features are high dimensional, typically on the order of hundreds of thousands to a few million, which makes them impractical for subsequent analysis. We propose two compact bilinear representations with the same discriminative power as the full bilinear representation but with only a few thousand dimensions. Our compact representations allow back-propagation of classification errors enabling an end-to-end optimization of the visual recognition system. The compact bilinear representations are derived through a novel kernelized analysis of bilinear pooling which provide insights into the discriminative power of bilinear pooling, and a platform for further research in compact pooling methods. Experimentation illustrate the utility of the proposed representations for image classification and few-shot learning across several datasets.
Cite
@article{arxiv.1511.06062,
title = {Compact Bilinear Pooling},
author = {Yang Gao and Oscar Beijbom and Ning Zhang and Trevor Darrell},
journal= {arXiv preprint arXiv:1511.06062},
year = {2016}
}
Comments
Camera ready version for CVPR