A multiple granularities method for person re-identification (re-ID) is proposed in this paper, which fuses global and semantic-part representations. A prior guided human parsing method is employed to parse a human body into precise basic semantic parts from low-resolution images, and multiple granularities are generated by recombining the adjacent basic semantic parts. Then, convolutional neural networks that seam-lessly unify the Softmax and TriHard losses are proposed to learn and fuse the global-level and the part-level features in different granularities. The proposed method not only extr...