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Multispectral pedestrian detection based on deep convolutional neural networks

机译:基于深度卷积神经网络的多光谱行人检测

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Vision-based pedestrian detection for all day are crucial in Advance Driver Assistance Systems (ADAS), autonomous vehicles and video surveillance. Based on the fact that human body radiation falls around 9.3pm, thermal images have distinctive advantages in pedestrian detection at nighttime. With the recent success of CNNs in vision community, how to properly explore information in color and thermal images in CNNs-based methods attracts attention of researchers. The contributions of this paper are twofold: First, multiple multispectral pedestrian detectors based on the Single Shot Detector (SSD) framework have been developed. Second, the performance of different pixel-level image fusion methods in multispectral CNN-based pedestrian detectors is evaluated. Extensive results based on KAIST multispectral pedestrian benchmark show that good pixel-level image fusion methods are complementary to both early-fusion and late-fusion CNN architectures at nighttime. The combination of image fusion and late-fusion CNN architectures can more properly exploit the multispectral information and achieve the best detection performance.
机译:全天的视觉行人检测对于提前驾驶员辅助系统(ADA),自治车辆和视频监控至关重要。基于人体辐射大约在9.3左右的事实,热图像在夜间的行人检测中具有独特的优势。随着CNNS在Vision界的最近成功,如何在CNNS的方法中正确探索颜色和热图像中的信息引起了研究人员的注意。本文的贡献是双重的:首先,已经开发了基于单次探测器(SSD)框架的多个多光谱行人探测器。其次,评估了不同像素级图像融合方法的不同像素级图像融合方法。基于Kaist MultiSpectral行人基准测试的广泛结果表明,良好的像素级图像融合方法与夜间早期融合和后期CNN架构互补。图像融合和深融合CNN架构的组合可以更适当地利用多光谱信息并实现最佳的检测性能。

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