Wildes, RichardKim, Yoon Tae2021-07-062021-07-062021-022021-07-06http://hdl.handle.net/10315/38432For occluded person re-identification this thesis presents the Multistage Multiscale Inference Network (MMI-Net) that leverages an inference framework based on multiscale representations with visibility guidance. MMI-Net consists of three sub-networks, i) global, ii) part-based and iii) integrated, to infer person re-identification. The global inference sub-network provides an overall holistic analysis of input images. The part-based sub-network captures more localized information. Both the global and part-based models make use of multiscale representation across multiple processing stages to capture a variety of complementary discriminative image structure. The integrated sub-network aggregates the global and part-based representations to obtain the final fusion of all extracted information. Pose guided attentional processing is used to provide robustness to occlusion. MMI-Net is unique in its integrated multistage inference architecture that accounts for local and global appearance with attentional processing. In empirical evaluation, MMI-Net outperforms current existing methods on multiple occluded person re-identification datasets.Author owns copyright, except where explicitly noted. Please contact the author directly with licensing requests.Computer scienceMultistage Multiscale Inference Network with Visibility Attention for Occluded Person Re-IdentificationElectronic Thesis or Dissertation2021-07-06Computer VisionPerson Re-IdentificationTrackingDeep LearningMachine Learning