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Multi-Modal Pedestrian Detection with Large Misalignment Based on Modal-Wise Regression and Multi-Modal IoU

机译:基于模态回归和多模态IOU的多模态行人检测

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The combined use of multiple modalities enables accurate pedestrian detection under poor lighting conditions by using the high visibility areas from these modalities together. The vital assumption for the combination use is that there is no or only a weak misalignment between the two modalities. In general, however, this assumption often breaks in actual situations. Due to this assumption's breakdown, the position of the bounding boxes does not match between the two modalities, resulting in a significant decrease in detection accuracy, especially in regions where the amount of misalignment is large. In this paper, we propose a multimodal Faster-RCNN that is robust against large misalignment. The keys are 1) modal-wise regression and 2) multi-modal IoU for mini-batch sampling. To deal with large misalignment, we perform bounding box regression for both the RPN and detection-head with both modalities. We also propose a new sampling strategy called “multi-modal mini-batch sampling” that integrates the IoU for both modalities. We demonstrate that the proposed method's performance is much better than that of the state-of-the-art methods for data with large misalignment through actual image experiments.
机译:通过使用来自这些方式的高可见区域在一起,多种方式的组合使用使得能够在差的照明条件下进行准确的行人检测。组合使用的重要假设是两种方式之间没有或只是弱错位。然而,通常,这种假设通常在实际情况下破裂。由于这种假设的故障,边界盒的位置在两个模态之间不匹配,导致检测精度的显着降低,尤其是在未对准量大的区域中。在本文中,我们提出了一种多模式更快的rcnn,其具有较强的未对准。键是1)模态性回归和2)多模态IOU用于迷你批量采样。为了处理大的错位,我们对具有两种方式的RPN和检测头的界限框回归。我们还提出了一种名为“多模态迷你批量采样”的新采样策略,该策略集成了IOU的两种方式。我们证明,所提出的方法的性能远优于通过实际图像实验具有很大未对准的数据的最先进方法的性能。

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