Jaeseok Choi, Kyoungmin Lee, Jisoo Jeong, Nojun Kwak
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引用次数: 1

摘要

近年来,人们积极地提出了许多基于多尺度特征的单级检测器。它们比使用区域建议网络(RPN)的两级检测器快得多,且检测性能没有明显下降。然而,在单级检测器中,靠近输入的低层负责检测小物体的特征映射由于太浅而存在表示能力不足的问题。还有一个结构上的矛盾,即特征映射不仅要向下一层传递低级信息,还必须包含用于预测的高级抽象。本文提出了一种利用连续层信息的特征融合方法来增强特征映射的表示能力。采用了统一的预测模块,提高了泛化性能。该方法预测精度更高,在PASCAL VOC和MS COCO上取得了比SSD和DSSD等竞争对手更高或兼容的分数。此外,它还保持了单级检测器计算速度快的优点,与同类性能的检测器相比,计算量要少得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Two-layer Residual Feature Fusion for Object Detection
Recently, a lot of single stage detectors using multi-scale features have been actively proposed. They are much faster than two stage detectors that use region proposal networks (RPN) without much degradation in the detection performances. However, the feature maps in the lower layers close to the input which are responsible for detecting small objects in a single stage detector have a problem of insufficient representation power because they are too shallow. There is also a structural contradiction that the feature maps not only have to deliver low-level information to next layers but also have to contain high-level abstraction for prediction. In this paper, we propose a method to enrich the representation power of feature maps using a new feature fusion method which makes use of the information from the consecutive layer. It also adopts a unified prediction module which has an enhanced generalization performance. The proposed method enables more precise prediction, which achieved higher or compatible score than other competitors such as SSD and DSSD on PASCAL VOC and MS COCO. In addition, it maintains the advantage of fast computation of a single stage detector, which requires much less computation than other detectors with similar performance.
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