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Autori principali: Jug, Julijan, Lampe, Ajda, Štruc, Vitomir, Peer, Peter
Natura: Preprint
Pubblicazione: 2022
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Accesso online:https://arxiv.org/abs/2212.06550
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author Jug, Julijan
Lampe, Ajda
Štruc, Vitomir
Peer, Peter
author_facet Jug, Julijan
Lampe, Ajda
Štruc, Vitomir
Peer, Peter
contents Body segmentation is an important step in many computer vision problems involving human images and one of the key components that affects the performance of all downstream tasks. Several prior works have approached this problem using a multi-task model that exploits correlations between different tasks to improve segmentation performance. Based on the success of such solutions, we present in this paper a novel multi-task model for human segmentation/parsing that involves three tasks, i.e., (i) keypoint-based skeleton estimation, (ii) dense pose prediction, and (iii) human-body segmentation. The main idea behind the proposed Segmentation--Pose--DensePose model (or SPD for short) is to learn a better segmentation model by sharing knowledge across different, yet related tasks. SPD is based on a shared deep neural network backbone that branches off into three task-specific model heads and is learned using a multi-task optimization objective. The performance of the model is analysed through rigorous experiments on the LIP and ATR datasets and in comparison to a recent (state-of-the-art) multi-task body-segmentation model. Comprehensive ablation studies are also presented. Our experimental results show that the proposed multi-task (segmentation) model is highly competitive and that the introduction of additional tasks contributes towards a higher overall segmentation performance.
format Preprint
id arxiv_https___arxiv_org_abs_2212_06550
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Body Segmentation Using Multi-task Learning
Jug, Julijan
Lampe, Ajda
Štruc, Vitomir
Peer, Peter
Computer Vision and Pattern Recognition
Body segmentation is an important step in many computer vision problems involving human images and one of the key components that affects the performance of all downstream tasks. Several prior works have approached this problem using a multi-task model that exploits correlations between different tasks to improve segmentation performance. Based on the success of such solutions, we present in this paper a novel multi-task model for human segmentation/parsing that involves three tasks, i.e., (i) keypoint-based skeleton estimation, (ii) dense pose prediction, and (iii) human-body segmentation. The main idea behind the proposed Segmentation--Pose--DensePose model (or SPD for short) is to learn a better segmentation model by sharing knowledge across different, yet related tasks. SPD is based on a shared deep neural network backbone that branches off into three task-specific model heads and is learned using a multi-task optimization objective. The performance of the model is analysed through rigorous experiments on the LIP and ATR datasets and in comparison to a recent (state-of-the-art) multi-task body-segmentation model. Comprehensive ablation studies are also presented. Our experimental results show that the proposed multi-task (segmentation) model is highly competitive and that the introduction of additional tasks contributes towards a higher overall segmentation performance.
title Body Segmentation Using Multi-task Learning
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2212.06550