Extracting RoIs for Robust Far-infrared Pedestrian Detection on Board

Jianwei Zhang, Xiaoguang Yuan, Zhewei Xu, Wenjun Ke
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Abstract

Far-infrared pedestrian detection onboard is more challenging compared to pedestrian detection of visible light. Existing works proved that the output of RoIs extraction, named as the proposal, is significantly related to recall rate and computational cost for pedestrian detection. However, it is non-trivial for RoIs extraction due to low resolution, blurred details, and pedestrian morphological features in far-infrared scenes. The paper proposes a novel RoIs extraction framework for far-infrared pedestrian detection on Board, named FIR-RoIEF, by using edge to obtain pedestrian contour feature and cascade filtering to gain valuable RoIs. Given pedestrian morphological features, we further present a vertical edge strategy to enhance pedestrian vertical features. A T-shaped template and RoIs reordering are used in the bounding box evaluation process to output pure and high-quality RoIs. Under basic and standard metrics, we perform experiments on public datasets, SCUT and KAIST, which both contain large far-infrared pedestrian objects. As for the result, given 100, 400, 1000 proposals, we both achieve the best recall in 1000 proposals, 94%, and 87% respectively. By the way, it can be proved that our method keeps a good balance between computational cost and good real-time.
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鲁棒车载远红外行人检测的roi提取
与可见光行人检测相比,车载远红外行人检测更具挑战性。已有的工作证明,roi提取的输出(即建议)与行人检测的召回率和计算成本显著相关。然而,由于远红外场景中分辨率低、细节模糊、行人形态特征等问题,对roi的提取具有重要意义。本文提出了一种新的用于车载远红外行人检测的roi提取框架FIR-RoIEF,该框架利用边缘提取行人轮廓特征,通过级联滤波获得有价值的roi。考虑到行人的形态特征,我们进一步提出了一种垂直边缘策略来增强行人的垂直特征。在边界盒评估过程中,采用t形模板和roi重新排序,输出纯净、高质量的roi。在基本和标准度量下,我们在公共数据集,SCUT和KAIST上进行了实验,这两个数据集都包含大型远红外行人物体。结果是,在给定100、400、1000个提案的情况下,我们都达到了1000个提案的最佳召回率,分别为94%和87%。结果表明,该方法在计算成本和实时性之间取得了很好的平衡。
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