具有特征检测的聚合

Shuyang Sun, Xiaoyu Yue, Xiaojuan Qi, Wanli Ouyang, V. Prisacariu, Philip H. S. Torr
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引用次数: 0

摘要

为了提高网络的性能,广泛采用了来自网络不同深度的聚合特性。许多现代体系结构都配备了跳跃连接,这实际上使得所有这些网络都发生了特征聚合。由于不同的特征表示不同的语义,因此存在不一致和不兼容的问题需要解决。然而,现有的作品通过元素的求和或串联以及背后的卷积来天真地混合深层特征。除了求和或连接之外,很少有更好的特征聚合方法被探索。在本文中,给定要聚合在一起的两层特征,我们首先检测和识别一层中需要更新的位置和内容,然后用另一层的信息替换识别位置的特征。这个过程,我们称之为detect - replace (DEPLA),使我们能够避免模式不一致,同时在合并的输出中保留有用的信息。实验结果表明,我们的方法在ImageNet分类、MS COCO目标检测和实例分割等三个主要视觉任务上大大提升了ResNet、FishNet和FPN等多个基线。
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Aggregation with Feature Detection
Aggregating features from different depths of a network is widely adopted to improve the network capability. Lots of modern architectures are equipped with skip connections, which actually makes the feature aggregation happen in all these networks. Since different features tell different semantic meanings, there are inconsistencies and incompatibilities to be solved. However, existing works naively blend deep features via element-wise summation or concatenation with a convolution behind. Better feature aggregation method beyond summation or concatenation is rarely explored. In this paper, given two layers of features to be aggregated together, we first detect and identify where and what needs to be updated in one layer, then replace the feature at the identified location with the information of the other layer This process, which we call DEtect-rePLAce (DEPLA), enables us to avoid inconsistent patterns while keeping useful information in the merged outputs. Experimental results demonstrate our method largely boosts multiple baselines e.g. ResNet, FishNet and FPN on three major vision tasks including ImageNet classification, MS COCO object detection and instance segmentation.
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