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Pedestrian Detection in Far-Infrared Daytime Images Using a Hierarchical Codebook of SURF

机译:使用SURF的分层密码本在远红外白天图像中进行行人检测

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摘要

One of the main challenges in intelligent vehicles concerns pedestrian detection for driving assistance. Recent experiments have showed that state-of-the-art descriptors provide better performances on the far-infrared (FIR) spectrum than on the visible one, even in daytime conditions, for pedestrian classification. In this paper, we propose a pedestrian detector with on-board FIR camera. Our main contribution is the exploitation of the specific characteristics of FIR images to design a fast, scale-invariant and robust pedestrian detector. Our system consists of three modules, each based on speeded-up robust feature (SURF) matching. The first module allows generating regions-of-interest (ROI), since in FIR images of the pedestrian shapes may vary in large scales, but heads appear usually as light regions. ROI are detected with a high recall rate with the hierarchical codebook of SURF features located in head regions. The second module consists of pedestrian full-body classification by using SVM. This module allows one to enhance the precision with low computational cost. In the third module, we combine the mean shift algorithm with inter-frame scale-invariant SURF feature tracking to enhance the robustness of our system. The experimental evaluation shows that our system outperforms, in the FIR domain, the state-of-the-art Haar-like Adaboost-cascade, histogram of oriented gradients (HOG)/linear SVM (linSVM) and MultiFtrpedestrian detectors, trained on the FIR images.
机译:智能车辆的主要挑战之一涉及行人检测以提供驾驶辅助。最近的实验表明,对于行人分类,即使在白天,最新技术的描述符在远红外(FIR)光谱上的性能也比可见光谱更好。在本文中,我们提出了一种带有车载FIR摄像机的行人探测器。我们的主要贡献是通过利用FIR图像的特定特性来设计快速,尺度不变且坚固的行人检测器。我们的系统由三个模块组成,每个模块都基于加速健壮功能(SURF)匹配。第一个模块允许生成感兴趣区域(ROI),因为在FIR中,行人形状的图像可能会大规模变化,但是头部通常显示为明亮区域。通过位于头部区域的SURF特征的分层码本,可以以较高的查全率检测ROI。第二个模块包括使用SVM对行人进行全身分类。该模块允许以较低的计算成本来提高精度。在第三个模块中,我们将均值偏移算法与帧间尺度不变SURF特征跟踪相结合,以增强系统的鲁棒性。实验评估表明,在FIR领域,我们的系统优于在FIR上训练的最先进的Haar状Adaboost级联,定向梯度直方图(HOG)/线性SVM(linSVM)和MultiFtrpedestrian检测器图片。

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