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Feature-Attentioned Object Detection in Remote Sensing Imagery

机译:遥感影像中注重特征的物体检测

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In this work, we introduce a novel feature-attentioned object detection framework to boost its performance in remote sensing imagery, which can focus on learning these intrinsic representations from different aspects in an end-to-end framework. Firstly, when fusing multi-scale visual features of backbone network, we adopt the channel-wise and pixel-wise attentions to enhance these object-related representations and weaken the backgroundoise information. Secondly, an adaptive multiple receptive fields attention mechanism is employed to generate horizontal region proposals under the special situation where objects in the remote sensing imagery are always with different aspect ratios. Finally, the proposal-level feature attention is proposed to better consider both multi-layer convolutional and apparent representations so that the region of interest network can better predict the object-wise category and its corresponding location information. Comprehensive evaluations on DOTA and UCAS-AOD datasets well demonstrate the effectiveness of our feature-attentioned network for object detection in remote sensing imagery.
机译:在这项工作中,我们介绍了一种新颖的特征密度对象检测框架,以提高其在遥感图像中的性能,从而专注于从端到端框架中的不同方面学习这些内在表示。首先,当融合骨干网络的多尺度视觉特征时,我们采用频道 - 方向和像素明智的关注来增强这些与对象相关的表示并削弱背景/噪声信息。其次,采用自适应多次接收领域注意机制来在遥感图像中的物体始终具有不同的纵横比的特殊情况下产生水平区域提案。最后,提出了提出的提议级别的注意力,以更好地考虑多层卷积和表观表示,使得感兴趣的网络区域可以更好地预测对象类别及其对应的位置信息。 DOTA和UCAS-AOD数据集的综合评估良好地展示了我们在遥感图像中对象检测的特征网络的有效性。

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