Cross-Domain Complementary Learning with Synthetic Data for Multi-Person Part Segmentation

07/11/2019
by   Kevin Lin, et al.
1

The success of supervised deep learning depends on the training labels. However, data labeling at pixel-level is very expensive, and people have been exploring synthetic data as an alternative. Even though it is easy to generate labels for synthetic data, the quality gap makes it challenging to transfer knowledge from synthetic data to real data. In this paper, we propose a novel technique, called cross-domain complementary learning that takes advantage of the rich variations of real data and the easily obtainable labels of synthetic data to learn multi-person part segmentation on real images without any human-annotated segmentation labels. To make sure the synthetic data and real data are aligned in a common latent space, we use an auxiliary task of human pose estimation to bridge the two domains. Without any real part segmentation training data, our method performs comparably to several supervised state-of-the-art approaches which require real part segmentation training data on Pascal-Person-Parts and COCO-DensePose datasets. We further demonstrate the generalizability of our method on predicting novel keypoints in the wild where no real data labels are available for the novel keypoints.

READ FULL TEXT

page 1

page 3

page 6

page 8

page 11

page 12

page 13

page 14

research
03/11/2015

Learning Classifiers from Synthetic Data Using a Multichannel Autoencoder

We propose a method for using synthetic data to help learning classifier...
research
07/14/2018

3D Hand Pose Estimation using Simulation and Partial-Supervision with a Shared Latent Space

Tremendous amounts of expensive annotated data are a vital ingredient fo...
research
11/23/2018

MURAUER: Mapping Unlabeled Real Data for Label AUstERity

Data labeling for learning 3D hand pose estimation models is a huge effo...
research
09/11/2021

MLReal: Bridging the gap between training on synthetic data and real data applications in machine learning

Among the biggest challenges we face in utilizing neural networks traine...
research
12/17/2021

PeopleSansPeople: A Synthetic Data Generator for Human-Centric Computer Vision

In recent years, person detection and human pose estimation have made gr...
research
09/10/2022

Self-supervised Human Mesh Recovery with Cross-Representation Alignment

Fully supervised human mesh recovery methods are data-hungry and have po...
research
12/16/2021

Understanding Memorization from the Perspective of Optimization via Efficient Influence Estimation

Over-parameterized deep neural networks are able to achieve excellent tr...

Please sign up or login with your details

Forgot password? Click here to reset