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Interactive multi-scale feature representation enhancement for small object detection

机译:用于小对象检测的交互式多尺度特征表示增强

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摘要

In the field of detection, there is a wide gap between the performance of small objects and that of medium, large objects. Some studies show that this gap is due to the contradiction between the classification-based backbone and localization. Although the reduction in the feature map size is beneficial for the extraction of abstract features, it will cause the loss of detailed features in the localization as traversing the backbone. Therefore, an interactive multi-scale feature representation enhancement strategy is proposed. This strategy includes two modules: first a multi-scale auxiliary enhancement network is proposed for feature interaction under multiple inputs. We scale the input to multiple scales corresponding to the prediction layers, and only passes through the lightweight extraction module to extract more detailed features for enhancing the original futures. Moreover, an adaptive interaction module is designed to aggregate the features of adjacent layers. This approach provides flexibility in achieving the improvement of small objects detection ability without changing the original network structure. Comprehensive experimental results based on PASCAL VOC and MS COCO datasets show the effectiveness of the proposed method. ? 2021 Elsevier B.V. All rights reserved.
机译:在检测领域,在小物体的性能和中,大物体的性能之间存在宽差距。一些研究表明,这种差距是由于基于分类的骨干和本地化之间的矛盾。虽然特征映射大小的减少是有益的抽象特征,但它将导致定位中的详细功能丢失,以横跨骨干。因此,提出了一种交互式多尺度特征表示增强策略。该策略包括两个模块:首先,提出了多尺度辅助增强网络,用于多个输入下的特征交互。我们将输入缩放到对应于预测层的多个刻度,只能通过轻质的提取模块,以提取更详细的功能以增强原始期货。此外,设计自适应交互模块以聚合相邻层的特征。这种方法提供了在不改变原始网络结构的情况下实现小对象检测能力的提高。基于Pascal VOC和MS COCO数据集的综合实验结果表明了该方法的有效性。还是2021 elestvier b.v.保留所有权利。

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