Partial Person Re-identification with Alignment and Hallucination

07/24/2018
by   Sara Iodice, et al.
4

Partial person re-identification involves matching pedestrian frames where only a part of a body is visible in corresponding images. This reflects practical CCTV surveillance scenario, where full person views are often not available. Missing body parts make the comparison very challenging due to significant misalignment and varying scale of the views. We propose Partial Matching Net (PMN) that detects body joints, aligns partial views and hallucinates the missing parts based on the information present in the frame and a learned model of a person. The aligned and reconstructed views are then combined into a joint representation and used for matching images. We evaluate our approach and compare to other methods on three different datasets, demonstrating significant improvements.

READ FULL TEXT

page 2

page 5

page 6

page 9

research
11/21/2019

Relation Network for Person Re-identification

Person re-identification (reID) aims at retrieving an image of the perso...
research
02/01/2015

Human Re-identification by Matching Compositional Template with Cluster Sampling

This paper aims at a newly raising task in visual surveillance: re-ident...
research
10/19/2010

Maximum Likelihood Mosaics

The majority of the approaches to the automatic recovery of a panoramic ...
research
04/14/2018

Horizontal Pyramid Matching for Person Re-identification

Despite the remarkable recent progress, person Re-identification (Re-ID)...
research
06/12/2019

CDPM: Convolutional Deformable Part Models for Person Re-identification

Part-level representations are essential for robust person re-identifica...
research
05/18/2020

Hierarchical and Efficient Learning for Person Re-Identification

Recent works in the person re-identification task mainly focus on the mo...
research
10/17/2018

Recognizing Partial Biometric Patterns

Biometric recognition on partial captured targets is challenging, where ...

Please sign up or login with your details

Forgot password? Click here to reset