Maximum Margin Metric Learning Over Discriminative
Nullspace for Person Re-identification
Abstract. In this paper we propose a novel metric learning framework called
Nullspace Kernel Maximum Margin Metric Learning (NK3ML) which efficiently
addresses the small sample size (SSS) problem inherent in person re-identification
and offers a significant performance gain over existing state-of-the-art methods.
Taking advantage of the very high dimensionality of the feature space, the metric is learned using a maximum margin criterion (MMC) over a discriminative
nullspace where all training sample points of a given class map onto a single
point, minimizing the within class scatter. A kernel version of MMC is used to
obtain a better between class separation. Extensive experiments on four challenging benchmark datasets for person re-identification demonstrate that the proposed
algorithm outperforms all existing methods. We obtain 99.8% rank-1 accuracy on
the most widely accepted and challenging dataset VIPeR, compared to the previous state of the art being only 63.92%