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Main Authors: Fan, Zhaoxin, Pan, Yuqing, Xu, Hao, Song, Zhenbo, Wang, Zhicheng, Wu, Kejian, Liu, Hongyan, He, Jun
Format: Preprint
Published: 2022
Subjects:
Online Access:https://arxiv.org/abs/2212.00731
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author Fan, Zhaoxin
Pan, Yuqing
Xu, Hao
Song, Zhenbo
Wang, Zhicheng
Wu, Kejian
Liu, Hongyan
He, Jun
author_facet Fan, Zhaoxin
Pan, Yuqing
Xu, Hao
Song, Zhenbo
Wang, Zhicheng
Wu, Kejian
Liu, Hongyan
He, Jun
contents In the field of full-body reconstruction, the scarcity of annotated data often impedes the efficacy of prevailing methods. To address this issue, we introduce FuRPE, a novel framework that employs part-experts and an ingenious pseudo ground-truth selection scheme to derive high-quality pseudo labels. These labels, central to our approach, equip our network with the capability to efficiently learn from the available data. Integral to FuRPE is a unique exponential moving average training strategy and expert-derived feature distillation strategy. These novel elements of FuRPE not only serve to further refine the model but also to reduce potential biases that may arise from inaccuracies in pseudo labels, thereby optimizing the network's training process and enhancing the robustness of the model. We apply FuRPE to train both two-stage and fully convolutional single-stage full-body reconstruction networks. Our exhaustive experiments on numerous benchmark datasets illustrate a substantial performance boost over existing methods, underscoring FuRPE's potential to reshape the state-of-the-art in full-body reconstruction.
format Preprint
id arxiv_https___arxiv_org_abs_2212_00731
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle FuRPE: Learning Full-body Reconstruction from Part Experts
Fan, Zhaoxin
Pan, Yuqing
Xu, Hao
Song, Zhenbo
Wang, Zhicheng
Wu, Kejian
Liu, Hongyan
He, Jun
Computer Vision and Pattern Recognition
In the field of full-body reconstruction, the scarcity of annotated data often impedes the efficacy of prevailing methods. To address this issue, we introduce FuRPE, a novel framework that employs part-experts and an ingenious pseudo ground-truth selection scheme to derive high-quality pseudo labels. These labels, central to our approach, equip our network with the capability to efficiently learn from the available data. Integral to FuRPE is a unique exponential moving average training strategy and expert-derived feature distillation strategy. These novel elements of FuRPE not only serve to further refine the model but also to reduce potential biases that may arise from inaccuracies in pseudo labels, thereby optimizing the network's training process and enhancing the robustness of the model. We apply FuRPE to train both two-stage and fully convolutional single-stage full-body reconstruction networks. Our exhaustive experiments on numerous benchmark datasets illustrate a substantial performance boost over existing methods, underscoring FuRPE's potential to reshape the state-of-the-art in full-body reconstruction.
title FuRPE: Learning Full-body Reconstruction from Part Experts
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2212.00731