A Deep Learning Approach For Pedestrian Segmentation In Infrared Images

R. Brehar, F. Vancea, T. Mariţa, S. Nedevschi
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引用次数: 3

Abstract

Semantic segmentation in the context of traffic scenes has been vastly explored using different architectures for deep convolutional networks and color images. In the case of infrared images there is place for improvement and scientific contributions mainly due to the lack of data sets that contain baseline segmentations in the infrared domain. This paper proposes a method for real time infrared pedestrian segmentation using ERFNet. Within the context of the proposed method we study the effect of different basic image enhancement techniques on the performance of the segmentation. We enhance an existing dataset of infrared images with ground truth segmentations for pedestrians. Our experiments show that the proposed method is accurate and appropriate for real time applications.
红外图像行人分割的深度学习方法
使用深度卷积网络和彩色图像的不同架构对交通场景中的语义分割进行了广泛的探索。在红外图像的情况下,由于缺乏包含红外域基线分割的数据集,因此存在改进和科学贡献的地方。提出了一种基于ERFNet的红外行人实时分割方法。在此背景下,我们研究了不同基本图像增强技术对分割性能的影响。我们用行人的地面真值分割增强了现有的红外图像数据集。实验结果表明,该方法是准确的,适合于实时应用。
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