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Pedestrian Detection based on Deep Fusion Network using Feature Correlation

机译:基于特征关联的深度融合网络的行人检测

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Since most of the pedestrian detection method focus on color images, the detection accuracy is lower when the images are captured at night or dark. In this paper, we propose a deep fusion network based pedestrian detection method. We utilize deconvolutional single shot multi-box detector (DSSD) fused at halfway stage. Also, we apply feature correlation for two image modality feature maps to produce a new feature map. For the experiment, we use KAIST dataset to train and test the proposed method. The experiment results show that the proposed method gains 22.46% lower miss rate compared to the KAIST pedestrian detection baseline. In addition, the proposed method shows at least 4.28% lower miss rate compared to the conventional halfway fusion method.
机译:由于大多数行人检测方法都集中在彩色图像上,因此在夜晚或黑暗时拍摄图像时,检测精度会降低。在本文中,我们提出了一种基于深度融合网络的行人检测方法。我们利用在中途融合的反卷积单发多盒检测器(DSSD)。另外,我们将特征相关性应用于两个图像模态特征图,以产生新的特征图。对于实验,我们使用KAIST数据集来训练和测试所提出的方法。实验结果表明,与KAIST行人检测基线相比,该方法的漏检率降低了22.46%。此外,与传统的中途融合方法相比,该方法的未命中率降低了至少4.28%。

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