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Bibliographic Details
Main Authors: Lu, Yawen, Liu, Dongfang, Wang, Qifan, Han, Cheng, Cui, Yiming, Cao, Zhiwen, Zhang, Xueling, Chen, Yingjie Victor, Fan, Heng
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.04999
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author Lu, Yawen
Liu, Dongfang
Wang, Qifan
Han, Cheng
Cui, Yiming
Cao, Zhiwen
Zhang, Xueling
Chen, Yingjie Victor
Fan, Heng
author_facet Lu, Yawen
Liu, Dongfang
Wang, Qifan
Han, Cheng
Cui, Yiming
Cao, Zhiwen
Zhang, Xueling
Chen, Yingjie Victor
Fan, Heng
contents In this work, we introduce ProMotion, a unified prototypical framework engineered to model fundamental motion tasks. ProMotion offers a range of compelling attributes that set it apart from current task-specific paradigms. We adopt a prototypical perspective, establishing a unified paradigm that harmonizes disparate motion learning approaches. This novel paradigm streamlines the architectural design, enabling the simultaneous assimilation of diverse motion information. We capitalize on a dual mechanism involving the feature denoiser and the prototypical learner to decipher the intricacies of motion. This approach effectively circumvents the pitfalls of ambiguity in pixel-wise feature matching, significantly bolstering the robustness of motion representation. We demonstrate a profound degree of transferability across distinct motion patterns. This inherent versatility reverberates robustly across a comprehensive spectrum of both 2D and 3D downstream tasks. Empirical results demonstrate that ProMotion outperforms various well-known specialized architectures, achieving 0.54 and 0.054 Abs Rel error on the Sintel and KITTI depth datasets, 1.04 and 2.01 average endpoint error on the clean and final pass of Sintel flow benchmark, and 4.30 F1-all error on the KITTI flow benchmark. For its efficacy, we hope our work can catalyze a paradigm shift in universal models in computer vision.
format Preprint
id arxiv_https___arxiv_org_abs_2406_04999
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle ProMotion: Prototypes As Motion Learners
Lu, Yawen
Liu, Dongfang
Wang, Qifan
Han, Cheng
Cui, Yiming
Cao, Zhiwen
Zhang, Xueling
Chen, Yingjie Victor
Fan, Heng
Computer Vision and Pattern Recognition
In this work, we introduce ProMotion, a unified prototypical framework engineered to model fundamental motion tasks. ProMotion offers a range of compelling attributes that set it apart from current task-specific paradigms. We adopt a prototypical perspective, establishing a unified paradigm that harmonizes disparate motion learning approaches. This novel paradigm streamlines the architectural design, enabling the simultaneous assimilation of diverse motion information. We capitalize on a dual mechanism involving the feature denoiser and the prototypical learner to decipher the intricacies of motion. This approach effectively circumvents the pitfalls of ambiguity in pixel-wise feature matching, significantly bolstering the robustness of motion representation. We demonstrate a profound degree of transferability across distinct motion patterns. This inherent versatility reverberates robustly across a comprehensive spectrum of both 2D and 3D downstream tasks. Empirical results demonstrate that ProMotion outperforms various well-known specialized architectures, achieving 0.54 and 0.054 Abs Rel error on the Sintel and KITTI depth datasets, 1.04 and 2.01 average endpoint error on the clean and final pass of Sintel flow benchmark, and 4.30 F1-all error on the KITTI flow benchmark. For its efficacy, we hope our work can catalyze a paradigm shift in universal models in computer vision.
title ProMotion: Prototypes As Motion Learners
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2406.04999