Occlusion Robust Military Vehicle Detection using Two-Stage Part Attention Networks

Sunyoung Cho
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Abstract

Detecting partially occluded objects is difficult due to the appearances and shapes of occluders are highly variable. These variabilities lead to challenges of localizing accurate bounding box or classifying objects with visible object parts. To address these problems, we propose a two-stage part-based attention approach for robust object detection under partial occlusion. First, our part attention network(PAN) captures the important object parts and then it is used to generate weighted object features. Based on the weighted features, the re-weighted object features are produced by our reinforced PAN(RPAN). Experiments are performed on our collected military vehicle dataset and synthetic occlusion dataset. Our method outperforms the baselines and demonstrates the robustness of detecting objects under partial occlusion.
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基于两阶段局部注意网络的遮挡鲁棒军用车辆检测
由于遮挡物的外观和形状变化很大,检测部分遮挡物是很困难的。这些可变性导致了定位精确边界框或对具有可见对象部分的对象进行分类的挑战。为了解决这些问题,我们提出了一种基于部分注意的两阶段鲁棒目标检测方法。首先,我们的局部关注网络(PAN)捕获重要的目标部分,然后使用它来生成加权目标特征。在加权特征的基础上,利用增强聚丙烯腈(RPAN)生成重新加权的目标特征。在我们收集的军用车辆数据集和合成遮挡数据集上进行了实验。我们的方法优于基线,并证明了部分遮挡下检测目标的鲁棒性。
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