Accurate and efficient pedestrian detection is crucial for the intelligent transportation system regarding pedestrian safety and mobility, e.g., Advanced Driver Assistance Systems, and smart pedestrian crosswalk systems. Among all pedestrian detection methods, vision-based detection method is demonstrated to be the most effective in previous studies. However, the existing vision-based pedestrian detection algorithms still have two limitations that restrict their implementations, those being real-time performance as well as the resistance to the impacts of environmental factors, e.g., low illumination conditions. To address these issues, this study proposes a lightweight Illumination and Temperature-aware Multispectral Network (IT-MN) for accurate and efficient pedestrian detection. The proposed IT-MN is an efficient one-stage detector. For accommodating the impacts of environmental factors and enhancing the sensing accuracy, thermal image data is fused by the proposed IT-MN with visual images to enrich useful information when visual image quality is limited. In addition, an innovative and effective late fusion strategy is also developed to optimize the image fusion performance. To make the proposed model implementable for edge computing, the model quantization is applied to reduce the model size by 75% while shortening the inference time significantly. The proposed algorithm is evaluated by comparing with the selected state-of-the-art algorithms using a public dataset collected by in-vehicle cameras. The results show that the proposed algorithm achieves a low miss rate and inference time at 14.19% and 0.03 seconds per image pair on GPU. Besides, the quantized IT-MN achieves an inference time of 0.21 seconds per image pair on the edge device, which also demonstrates the potentiality of deploying the proposed model on edge devices as a highly efficient pedestrian detection algorithm.
翻译:准确而高效的行人检测对于行人安全和流动性方面的智能运输系统至关重要,例如高级司机协助系统和智能行人交叉行走系统。在所有行人检测方法中,基于视觉的检测方法在以往的研究中证明最为有效。然而,现有的基于视觉的行人检测算法仍然有两个限制,限制其实施,即实时性能以及对环境因素影响的抗力,例如低照明条件。为解决这些问题,本研究建议采用轻量的照明和温度觉悟多光谱网络(IT-MN),以便准确和高效地探测行人。拟议的IT-MN是一种高效的一阶段检测器。为适应环境因素的影响和提高感测精度,热图像数据由拟议的IT-MN的视觉图像结合,以便在视觉图像质量有限的情况下丰富有用的信息。此外,还制定了创新和有效的迟度组合战略,以优化图像混合性能。为了使拟议的模型在边缘计算中能够执行,模型的错觉多光度多光谱网络(IT-MNM)网络(IT-MNMN) 。拟议的IT-MMM(IT-MN)是一个高效的一阶段检测器检测器检测器,用来通过将模型的缩缩缩缩缩缩缩缩缩算算算算结果,同时通过75的算算算算算算算算算算算算算算算算算算算算。