I. Introduction
Person re-identification (re-id) is a task to retrieve the same person images from gallery sets of non overlapping cameras, given an image of a person of interest from another camera. The task of re-id is gaining increasing importance as it is an essential component of intelligent surveillance systems [1], [2]. The variations like illumination, human pose, view angle, resolution, occlusions, clothing and background in the images make re-id a very challenging task. With the advancement of deep learning and neural networks, ConvNets [3]–[4], [5], well designed for image classification tasks, are performing well in re- id as they provide impressive feature representations of person images. Due to their discriminative representation capability, they outperform the traditional handcrafted low-level features by a large margin. The difference between re- id and image classification tasks is that the training and testing classes (i.e. person identities) are different in re-id. Therefore, the re-id task requires more discriminative feature representations to distinguish unseen similar images.