论文标题

NETNET:邻居擦除和转移网络以进行更好的单镜头对象检测

NETNet: Neighbor Erasing and Transferring Network for Better Single Shot Object Detection

论文作者

Li, Yazhao, Pang, Yanwei, Shen, Jianbing, Cao, Jiale, Shao, Ling

论文摘要

由于实时检测和性能提高的优势,单次检测器最近引起了人们的关注。为了解决复杂的量表变化,单次探测器基于多个金字塔层做出比例感知的预测。但是,金字塔中的特征不足以了解,这限制了检测性能。可以观察到由对象量表变化引起的单发探测器中的两个常见问题:(1)很容易错过小物体; (2)有时将大物体的显着部分视为对象。通过此观察,我们提出了一个新的邻居擦除和转移(净)机制,以重新配置金字塔特征并探索尺度感知的特征。在网络中,邻居擦除模块(NEM)旨在消除大物体的显着特征,并强调浅层中的小物体的特征。引入了邻居转移模块(NTM),以传递擦除的特征,并在深层中突出显示大物体。有了这种机制,构建了一个称为NetNet的单发网络,以用于比例感知对象检测。此外,我们建议汇总最近的附近金字塔特征,以增强我们的网络。 NetNet以27 fps的速度和32.0%的AP以55 fps的速度实现38.5%的AP,在MS COCO数据集上达到55 fps。结果,NetNet在实时和准确的对象检测方面取得了更好的权衡。

Due to the advantages of real-time detection and improved performance, single-shot detectors have gained great attention recently. To solve the complex scale variations, single-shot detectors make scale-aware predictions based on multiple pyramid layers. However, the features in the pyramid are not scale-aware enough, which limits the detection performance. Two common problems in single-shot detectors caused by object scale variations can be observed: (1) small objects are easily missed; (2) the salient part of a large object is sometimes detected as an object. With this observation, we propose a new Neighbor Erasing and Transferring (NET) mechanism to reconfigure the pyramid features and explore scale-aware features. In NET, a Neighbor Erasing Module (NEM) is designed to erase the salient features of large objects and emphasize the features of small objects in shallow layers. A Neighbor Transferring Module (NTM) is introduced to transfer the erased features and highlight large objects in deep layers. With this mechanism, a single-shot network called NETNet is constructed for scale-aware object detection. In addition, we propose to aggregate nearest neighboring pyramid features to enhance our NET. NETNet achieves 38.5% AP at a speed of 27 FPS and 32.0% AP at a speed of 55 FPS on MS COCO dataset. As a result, NETNet achieves a better trade-off for real-time and accurate object detection.

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