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

CVPR(2020)

引用 38|浏览188
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摘要
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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关键词
neighbor erasing and transferring mechanism,neighbor erasing and transferring network,accurate object detection,nearest neighboring pyramid features,scale-aware object detection,single-shot network,erased features,Neighbor Transferring Module,salient features,Neighbor Erasing Module,scale-aware features,NET,object scale variations,detection performance,multiple pyramid layers,scale-aware predictions,complex scale variations,single-shot detectors,real-time detection,single shot object detection,NETNet
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