基于红外图像的铁路场景异常物体入侵检测

Yi Liu, Han Dong, Yundong Li
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引用次数: 0

摘要

异常物体的入侵检测对于避免交通事故、保证列车运行安全至关重要。利用RGB图像的基于计算机视觉的方法已被广泛研究用于白天的入侵检测。然而,由于红外图像的训练样本有限,在夜间使用红外图像进行异常目标检测仍然更具挑战性,因此我们提出了一种基于CycleGAN图像风格转移的数据增强策略。首先,以白天的铁路场景图像和夜间的非铁路场景图像为条件,生成合成图像;然后,使用生成的合成样本训练SSD目标检测模型。最后,将训练好的SSD模型用于夜间红外图像的异常目标检测。实验结果表明,所提出的数据增强策略和夜景目标检测方法是有效的。
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Intrusion Detection of Abnormal Objects for Railway Scenes Using Infrared Images
Intrusion detection of abnormal objects is critical to avoid traffic accidents and ensure the safety of train operations. Computer-vision based approaches using RGB images have been intensively investigated for intrusion detection at daytime. However, the abnormal object detection using infrared images at nighttime remains more challenging because training samples of infrared images are limited to address this issue, we propose a data augmentation strategy motivated by image style transfer using CycleGAN. First, the synthetic images are generated which conditioned on railway scene images at daytime and non-railway scene images at nighttime. Then, a SSD object detection model is trained using the generated synthetic samples. Finally, the trained SSD model is used to detect abnormal objects for infrared images at nighttime. Experimental results demonstrate that the proposed data augmentation strategy and the object detection method for nighttime scene is effective.
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