Disentangled Person Image Generation
Liqian Ma, Qianru Sun, Stamatios Georgoulis, Luc Van Gool, Bernt, Schiele, Mario Fritz

TL;DR
This paper introduces a two-stage disentangled representation framework for realistic person image generation, allowing detailed control over foreground, background, and pose, with applications in image manipulation and re-identification.
Contribution
It proposes a novel multi-branched reconstruction network and adversarial mapping functions to disentangle and manipulate person image factors, enhancing control and realism.
Findings
Generates realistic person images with controllable factors.
Enables manipulation and interpolation of image attributes.
Improves person re-identification performance.
Abstract
Generating novel, yet realistic, images of persons is a challenging task due to the complex interplay between the different image factors, such as the foreground, background and pose information. In this work, we aim at generating such images based on a novel, two-stage reconstruction pipeline that learns a disentangled representation of the aforementioned image factors and generates novel person images at the same time. First, a multi-branched reconstruction network is proposed to disentangle and encode the three factors into embedding features, which are then combined to re-compose the input image itself. Second, three corresponding mapping functions are learned in an adversarial manner in order to map Gaussian noise to the learned embedding feature space, for each factor respectively. Using the proposed framework, we can manipulate the foreground, background and pose of the input…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Face recognition and analysis · Advanced Neural Network Applications
