Pose2Instance: Harnessing Keypoints for Person Instance Segmentation

Publikation: Working paperPreprint

Standard

Pose2Instance: Harnessing Keypoints for Person Instance Segmentation. / Belongie, Serge; Tripathi, Subarna; Collins, Maxwell D.; Brown, Matthew.

2022.

Publikation: Working paperPreprint

Harvard

Belongie, S, Tripathi, S, Collins, MD & Brown, M 2022 'Pose2Instance: Harnessing Keypoints for Person Instance Segmentation'. https://doi.org/10.48550/arXiv.1704.01152

APA

Belongie, S., Tripathi, S., Collins, M. D., & Brown, M. (2022). Pose2Instance: Harnessing Keypoints for Person Instance Segmentation. https://doi.org/10.48550/arXiv.1704.01152

Vancouver

Belongie S, Tripathi S, Collins MD, Brown M. Pose2Instance: Harnessing Keypoints for Person Instance Segmentation. 2022. https://doi.org/10.48550/arXiv.1704.01152

Author

Belongie, Serge ; Tripathi, Subarna ; Collins, Maxwell D. ; Brown, Matthew. / Pose2Instance: Harnessing Keypoints for Person Instance Segmentation. 2022.

Bibtex

@techreport{ea63c6eaf259414aada57d4dc684b700,
title = "Pose2Instance: Harnessing Keypoints for Person Instance Segmentation",
abstract = "Human keypoints are a well-studied representation of people.We explore how to use keypoint models to improve instance-level person segmentation. The main idea is to harness the notion of a distance transform of oracle provided keypoints or estimated keypoint heatmaps as a prior for person instance segmentation task within a deep neural network. For training and evaluation, we consider all those images from COCO where both instance segmentation and human keypoints annotations are available. We first show how oracle keypoints can boost the performance of existing human segmentation model during inference without any training. Next, we propose a framework to directly learn a deep instance segmentation model conditioned on human pose. Experimental results show that at various Intersection Over Union (IOU) thresholds, in a constrained environment with oracle keypoints, the instance segmentation accuracy achieves 10% to 12% relative improvements over a strong baseline of oracle bounding boxes. In a more realistic environment, without the oracle keypoints, the proposed deep person instance segmentation model conditioned on human pose achieves 3.8% to 10.5% relative improvements comparing with its strongest baseline of a deep network trained only for segmentation.",
author = "Serge Belongie and Subarna Tripathi and Collins, {Maxwell D.} and Matthew Brown",
year = "2022",
doi = "https://doi.org/10.48550/arXiv.1704.01152",
language = "English",
type = "WorkingPaper",

}

RIS

TY - UNPB

T1 - Pose2Instance: Harnessing Keypoints for Person Instance Segmentation

AU - Belongie, Serge

AU - Tripathi, Subarna

AU - Collins, Maxwell D.

AU - Brown, Matthew

PY - 2022

Y1 - 2022

N2 - Human keypoints are a well-studied representation of people.We explore how to use keypoint models to improve instance-level person segmentation. The main idea is to harness the notion of a distance transform of oracle provided keypoints or estimated keypoint heatmaps as a prior for person instance segmentation task within a deep neural network. For training and evaluation, we consider all those images from COCO where both instance segmentation and human keypoints annotations are available. We first show how oracle keypoints can boost the performance of existing human segmentation model during inference without any training. Next, we propose a framework to directly learn a deep instance segmentation model conditioned on human pose. Experimental results show that at various Intersection Over Union (IOU) thresholds, in a constrained environment with oracle keypoints, the instance segmentation accuracy achieves 10% to 12% relative improvements over a strong baseline of oracle bounding boxes. In a more realistic environment, without the oracle keypoints, the proposed deep person instance segmentation model conditioned on human pose achieves 3.8% to 10.5% relative improvements comparing with its strongest baseline of a deep network trained only for segmentation.

AB - Human keypoints are a well-studied representation of people.We explore how to use keypoint models to improve instance-level person segmentation. The main idea is to harness the notion of a distance transform of oracle provided keypoints or estimated keypoint heatmaps as a prior for person instance segmentation task within a deep neural network. For training and evaluation, we consider all those images from COCO where both instance segmentation and human keypoints annotations are available. We first show how oracle keypoints can boost the performance of existing human segmentation model during inference without any training. Next, we propose a framework to directly learn a deep instance segmentation model conditioned on human pose. Experimental results show that at various Intersection Over Union (IOU) thresholds, in a constrained environment with oracle keypoints, the instance segmentation accuracy achieves 10% to 12% relative improvements over a strong baseline of oracle bounding boxes. In a more realistic environment, without the oracle keypoints, the proposed deep person instance segmentation model conditioned on human pose achieves 3.8% to 10.5% relative improvements comparing with its strongest baseline of a deep network trained only for segmentation.

UR - https://vision.cornell.edu/se3/wp-content/uploads/2017/05/pose2instance-arxiv.pdf

U2 - https://doi.org/10.48550/arXiv.1704.01152

DO - https://doi.org/10.48550/arXiv.1704.01152

M3 - Preprint

BT - Pose2Instance: Harnessing Keypoints for Person Instance Segmentation

ER -

ID: 307527307