Feature Fusing of Feature Pyramid Network for Multi-Scale Pedestrian Detection

Fiseha B. Tesema, Junpeng Lin, Jie Ou, Hong Wu, William Zhu
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引用次数: 5

Abstract

Pedestrian detection is a fundamental component in many real-world applications such as automatic driving, intelligent surveillance, person re-identification and robotics. Therefore, it has attracted massive attention in the last decades. However, pedestrians in an images always exhibit different scales, which constitutes a significant mode of intra-class variability and affect the performance of pedestrian detection algorithm. To address this problem, we apply FPN (Feature Pyramid Network)for pedestrian detection. FPN exploits the inherent multi-scale structure of a deep convolutional network to construct a feature pyramid that has rich semantics at all levels and facilitates the detection of objects at different scales. To leverage the information from different levels of the feature pyramid, we extend the FPN-based pedestrian detection by fusing the feature of each level with adaptive feature pooling. Furthermore, we also integrate a Squeeze and Excitation module to the ROI pooled features from each level before the feature fusion. The experiment result on Caltech dataset shows that our approach outperforms the basic FPN-based pedestrian detection and robust towards to various scale of pedestrian.
多尺度行人检测中特征金字塔网络的特征融合
行人检测是许多实际应用的基本组成部分,如自动驾驶、智能监控、人员再识别和机器人技术。因此,在过去的几十年里,它引起了广泛的关注。然而,图像中的行人总是呈现出不同的尺度,这构成了一个重要的类内变异性模式,影响了行人检测算法的性能。为了解决这个问题,我们应用FPN(特征金字塔网络)进行行人检测。FPN利用深度卷积网络固有的多尺度结构,构建了一个各层次语义丰富的特征金字塔,便于对不同尺度的目标进行检测。为了利用特征金字塔不同层次的信息,我们通过自适应特征池融合每个层次的特征来扩展基于fpn的行人检测。此外,在特征融合之前,我们还将一个挤压和激励模块集成到每个级别的ROI池特征中。在加州理工学院数据集上的实验结果表明,该方法优于基于基本fpn的行人检测方法,对各种尺度的行人具有鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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