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Deep Domain Adaptation for Single-Shot Vehicle Detector in Satellite Images

机译:卫星图像中单发车辆检测器的深域自适应

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In this paper, we designed unsupervised domain adaptation (DA) methods to vehicle detection in high-resolution satellite images. We applied two Single Shot MultiBox Detectors, which have advantages in handling image feature differences among various kinds of image data: Correlation Alignment DA (CORAL DA) and adversarial DA. These novel methods can much improve accuracy without annotated data by finding the common feature space of source and target domains and aligning the features. While a mean of average precision (AP) and F1 dropped from 84.1 % in the source domain to 66.3% in the target domain, the CORAL DA and adversarial DA improved it to 76.8% and 75.9% respectively. These improvements were over a half of the performance degradation, indicating the usability of our methods.
机译:在本文中,我们为高分辨率卫星图像中的车辆检测设计了无监督域自适应(DA)方法。我们应用了两个Single Shot MultiBox检测器,它们在处理各种图像数据之间的图像特征差异方面具有优势:Correlation Alignment DA(CORAL DA)和adversarial DA。通过寻找源域和目标域的公共特征空间并对齐特征,这些新颖的方法可以在不带注释数据的情况下极大地提高准确性。虽然平均精确度(AP)和F1的平均值从源域的84.1%降至目标域的66.3%,但CORAL DA和对抗性DA分别将其提高到76.8%和75.9%。这些改进是性能下降的一半以上,表明了我们方法的可用性。

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