A-DFPN:用于目标检测的对抗学习和变形特征金字塔网络

Miao Cheng, Jinpeng Su, Luyi Li, Xiangming Zhou
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引用次数: 0

摘要

为了减弱尺度对目标实例的影响,我们创新地提出了一种基于对抗学习和变形特征金字塔的目标检测检测器:A-DFPN。首先,在特征提取阶段,提出变形特征金字塔模块的概念;突出的优点是可以从不同的卷积层和不同尺度的对象中充分提取目标特征。此外,还提出了两阶段模块,通过多步回归逐步完善前一阶段调整后的锚点,并在每个RPN中定位目标的位置和形状,使定位更加准确。同时,Mask模块通过空间阻塞某些特征映射或通过操纵特征响应来生成困难的样本来增加检测器的鲁棒性。最后,由软网管对最终的边界框进行过滤。在Resnet-101网络架构下,我们的算法在Pascal VOC 2007数据集上达到了81.1034%的平均精度,在DETRAC数据集上达到了73.52%的平均精度,达到了最先进的检测水平。
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A-DFPN: Adversarial Learning and Deformation Feature Pyramid Networks for Object Detection
In order to weak the variation of the object instance caused by the scale, we innovatively propose an object detection detector based on adversarial learning and deformation feature pyramid: A-DFPN. Firstly, in the feature extraction stage, the concept of Deformation Feature Pyramid Module is proposed. The outstanding advantage is that it can fully extract object features from different convolution layers and objects of different scales. In addition, Two Stage Module is also proposed, it gradually perfects the adjusted anchors in the previous stage through multi-step regression, and locates the position and shape of the object in each RPN to make the location more accurate. At the same time, Mask Module increases the robustness of the detector by spatially blocking certain feature maps or by manipulating feature responses to generate difficult samples. Finally, the final bounding boxes is filtered by soft-NMS. Under the Resnet-101 network architecture, our algorithm achieves the mean average precision of 81.1034% on the Pascal VOC 2007 dataset and 73.52% on the DETRAC dataset, reaching the state-of-the-art detection level.
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