物理上允许的偏振数据增强道路场景分析

Cyprien Ruffino, Rachel Blin, Samia Ainouz, G. Gasso, Romain H'erault, F. Mériaudeau, S. Canu
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引用次数: 0

摘要

偏振成像技术与深度学习技术在场景分析等不同任务上的表现都有所改善。然而,由于训练数据集的规模较小,其鲁棒性可能受到质疑。虽然这个问题可以通过数据增强来解决,但极化模式受到物理可行性的限制,这是经典数据增强技术无法解决的。为了解决这个问题,我们建议使用CycleGAN,这是一种基于深度生成模型的图像翻译技术,它只依赖于未配对的数据,将大型标记道路场景数据集转移到极化域。我们设计了几个辅助损耗项,与CycleGAN损耗一起处理偏振图像的物理约束。该解决方案的效率在道路场景物体检测任务中得到了证明,其中生成的逼真偏振图像可以将汽车和行人的检测性能提高9%。由此产生的受限CycleGAN公开发布,允许任何人生成自己的偏振图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Physically-admissible polarimetric data augmentation for road-scene analysis
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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