Pedestrian Detection by Fusion of RGB and Infrared Images in Low-Light Environment

Qing Deng, Wei Tian, Yuyao Huang, Lu Xiong, Xin Bi
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引用次数: 3

Abstract

Pedestrian detection in low-light environment is an essential part for autonomous driving in all-day and all-weather situations. A current trend is utilizing multispectral information such as RGB and infrared images to detect pedestrians. Despite its efficacy, such an approach suffers from underperformance in dealing with varied object scales due to its limited feature fusion on semantic levels. To address the above problem, we propose a novel multi-layer fusion network called as MLF-FRCNN. In this network, multi-scale feature maps are created from RGB and infrared channels from each backbone block. A feature pyramid network module is further introduced to facilitate predictions on multi-layer feature maps. The experimental results on the KAIST Dataset reveal that our method achieves a runtime performance of 0.14s per frame and an average precision of 91.2% which outperforms state-of-the-art multispectral fusion methods. The effectiveness of our approach in dealing with scaled objects in low-light environment is further proven by ablation studies.
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基于RGB和红外图像融合的低光环境下行人检测
低光环境下的行人检测是全天候自动驾驶的重要组成部分。目前的趋势是利用RGB和红外图像等多光谱信息来检测行人。尽管该方法具有一定的有效性,但由于其在语义层面上的特征融合有限,在处理不同对象尺度时表现不佳。为了解决上述问题,我们提出了一种新的多层融合网络MLF-FRCNN。在该网络中,从每个主干块的RGB通道和红外通道创建多尺度特征图。进一步引入特征金字塔网络模块,便于对多层特征映射进行预测。在KAIST数据集上的实验结果表明,该方法的运行时性能为每帧0.14s,平均精度为91.2%,优于目前最先进的多光谱融合方法。烧蚀研究进一步证明了我们的方法在低光环境下处理缩放目标的有效性。
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