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Article Dans Une Revue Computer Vision and Image Understanding Année : 2022

Physically-admissible polarimetric data augmentation for road-scene analysis

Cyprien Ruffino
Rachel Blin
Samia Ainouz
Romain Hérault
Fabrice Meriaudeau
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Stéphane Canu
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Résumé

Polarimetric imaging, along with deep learning, has shown improved performances on different tasks including scene analysis. However, its robustness may be questioned because of the small size of the training datasets. Though the issue could be solved by data augmentation, polarization modalities are subject to physical feasibility constraints unaddressed by classical data augmentation techniques. To address this issue, we propose to use CycleGAN, an image translation technique based on deep generative models that solely relies on unpaired data, to transfer large labeled road scene datasets to the polarimetric domain. We design several auxiliary loss terms that, alongside the CycleGAN losses, deal with the physical constraints of polarimetric images. The efficiency of this solution is demonstrated on road scene object detection tasks where generated realistic polarimetric images allow to improve performances on cars and pedestrian detection up to 9%. The resulting constrained CycleGAN is publicly released, allowing anyone to generate their own polarimetric images.
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Dates et versions

hal-04461606 , version 1 (16-02-2024)

Identifiants

Citer

Cyprien Ruffino, Rachel Blin, Samia Ainouz, Gilles Gasso, Romain Hérault, et al.. Physically-admissible polarimetric data augmentation for road-scene analysis. Computer Vision and Image Understanding, 2022, 222, pp.103495. ⟨10.1016/j.cviu.2022.103495⟩. ⟨hal-04461606⟩
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