Detangling People: Individuating Multiple Close People and Their Body Parts via Region Assembly
Hao Jiang, Kristen Grauman

TL;DR
This paper introduces a novel region assembly approach to accurately separate and identify multiple closely situated people and their body parts in complex images, improving robustness over existing methods.
Contribution
It formulates person detangling as a region assembly problem with a novel optimization and Lagrangian relaxation, enabling pixel-level body part and individual assignment in crowded scenes.
Findings
Outperforms existing detection and segmentation methods on challenging datasets.
Robustly handles occlusion, clutter, and complex poses.
Enhances proxemics recognition accuracy in crowded images.
Abstract
Today's person detection methods work best when people are in common upright poses and appear reasonably well spaced out in the image. However, in many real images, that's not what people do. People often appear quite close to each other, e.g., with limbs linked or heads touching, and their poses are often not pedestrian-like. We propose an approach to detangle people in multi-person images. We formulate the task as a region assembly problem. Starting from a large set of overlapping regions from body part semantic segmentation and generic object proposals, our optimization approach reassembles those pieces together into multiple person instances. It enforces that the composed body part regions of each person instance obey constraints on relative sizes, mutual spatial relationships, foreground coverage, and exclusive label assignments when overlapping. Since optimal region assembly is a…
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Videos
Detangling People: Individuating Multiple Close People and Their Body Parts via Region Assembly· youtube
Taxonomy
TopicsVideo Surveillance and Tracking Methods · Face recognition and analysis · Advanced Neural Network Applications
