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Autori principali: Lin, Fangzhou, Wang, Yuping, Guo, Yuliang, Huang, Zixun, Huang, Xinyu, Zhang, Haichong, Yamada, Kazunori, Tu, Zhengzhong, Ren, Liu, Zhang, Ziming
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2512.06251
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author Lin, Fangzhou
Wang, Yuping
Guo, Yuliang
Huang, Zixun
Huang, Xinyu
Zhang, Haichong
Yamada, Kazunori
Tu, Zhengzhong
Ren, Liu
Zhang, Ziming
author_facet Lin, Fangzhou
Wang, Yuping
Guo, Yuliang
Huang, Zixun
Huang, Xinyu
Zhang, Haichong
Yamada, Kazunori
Tu, Zhengzhong
Ren, Liu
Zhang, Ziming
contents Partially Supervised Multi-Task Learning (PS-MTL) aims to leverage knowledge across tasks when annotations are incomplete. Existing approaches, however, have largely focused on the simpler setting of homogeneous, dense prediction tasks, leaving the more realistic challenge of learning from structurally diverse tasks unexplored. To this end, we introduce NexusFlow, a novel, lightweight, and plug-and-play framework effective in both settings. NexusFlow introduces a set of surrogate networks with invertible coupling layers to align the latent feature distributions of tasks, creating a unified representation that enables effective knowledge transfer. The coupling layers are bijective, preserving information while mapping features into a shared canonical space. This invertibility avoids representational collapse and enables alignment across structurally different tasks without reducing expressive capacity. We first evaluate NexusFlow on the core challenge of domain-partitioned autonomous driving, where dense map reconstruction and sparse multi-object tracking are supervised in different geographic regions, creating both structural disparity and a strong domain gap. NexusFlow sets a new state-of-the-art result on nuScenes, outperforming strong partially supervised baselines. To demonstrate generality, we further test NexusFlow on NYUv2 using three homogeneous dense prediction tasks, segmentation, depth, and surface normals, as a representative N-task PS-MTL scenario. NexusFlow yields consistent gains across all tasks, confirming its broad applicability.
format Preprint
id arxiv_https___arxiv_org_abs_2512_06251
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle NexusFlow: Unifying Disparate Tasks under Partial Supervision via Invertible Flow Networks
Lin, Fangzhou
Wang, Yuping
Guo, Yuliang
Huang, Zixun
Huang, Xinyu
Zhang, Haichong
Yamada, Kazunori
Tu, Zhengzhong
Ren, Liu
Zhang, Ziming
Computer Vision and Pattern Recognition
Partially Supervised Multi-Task Learning (PS-MTL) aims to leverage knowledge across tasks when annotations are incomplete. Existing approaches, however, have largely focused on the simpler setting of homogeneous, dense prediction tasks, leaving the more realistic challenge of learning from structurally diverse tasks unexplored. To this end, we introduce NexusFlow, a novel, lightweight, and plug-and-play framework effective in both settings. NexusFlow introduces a set of surrogate networks with invertible coupling layers to align the latent feature distributions of tasks, creating a unified representation that enables effective knowledge transfer. The coupling layers are bijective, preserving information while mapping features into a shared canonical space. This invertibility avoids representational collapse and enables alignment across structurally different tasks without reducing expressive capacity. We first evaluate NexusFlow on the core challenge of domain-partitioned autonomous driving, where dense map reconstruction and sparse multi-object tracking are supervised in different geographic regions, creating both structural disparity and a strong domain gap. NexusFlow sets a new state-of-the-art result on nuScenes, outperforming strong partially supervised baselines. To demonstrate generality, we further test NexusFlow on NYUv2 using three homogeneous dense prediction tasks, segmentation, depth, and surface normals, as a representative N-task PS-MTL scenario. NexusFlow yields consistent gains across all tasks, confirming its broad applicability.
title NexusFlow: Unifying Disparate Tasks under Partial Supervision via Invertible Flow Networks
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.06251