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Reverse Densely Connected Feature Pyramid Network for Object Detection

机译:反向密集连接特征金字塔网络的目标检测

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The wide and extreme diversity of object size is an everlasting challenging issue in object detection research. To address this problem, we propose Reverse Densely Connected Feature Pyramid Network (Rev-Dense FPN), a novel multi-scale feature transformation and fusion method for object detection. Through reverse dense connection, we directly fuse all the feature maps of higher levels than the current one. This avoids useful contextual information on the higher level to vanish when passed down to lower levels, which is a key disadvantage of widely used feature fusion paradigms such as recursive top-down connection. Therefore, a more powerful hierarchical representation structure can be obtained by effectively aggregating multi-level contexts. We apply Rev-Dense FPN on SSD framework, which reaches 81.1% mAP (mean average precision) on the PASCAL VOC 2007 dataset and 31.2 AP on the MS COCO dataset. The results show that Rev-Dense FPN is more effective in dealing with diversified object sizes.
机译:在物体检测研究中,物体尺寸的广泛和极端多样性是一个永恒的挑战性问题。为了解决这个问题,我们提出了一种反向密集连接特征金字塔网络(Rev-Dense Fyramid Network,Rev-Dense FPN),这是一种新颖的多尺度特征转换和融合方法,用于物体检测。通过反向密集连接,我们直接融合了比当前级别更高级别的所有功能图。这避免了较高级别的有用上下文信息在向下传递到较低级别时消失,这是广泛使用的特征融合范例(例如递归自顶向下连接)的主要缺点。因此,可以通过有效地聚合多级上下文来获得更强大的层次表示结构。我们在SSD框架上应用了Rev-Dense FPN,在PASCAL VOC 2007数据集上达到了81.1%的mAP(平均精度),在MS COCO数据集上达到了31.2 AP。结果表明,Rev-Dense FPN在处理各种对象尺寸方面更为有效。

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