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A Method for Vehicle Detection in High-Resolution Satellite Images that Uses a Region-Based Object Detector and Unsupervised Domain Adaptation

机译:一种在高分辨率卫星图像中的车辆检测方法,该方法使用基于区域的对象检测器和无监督域自适应

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摘要

Recently, object detectors based on deep learning have become widely used for vehicle detection and contributed to drastic improvement in performance measures. However, deep learning requires much training data, and detection performance notably degrades when the target area of vehicle detection (the target domain) is different from the training data (the source domain). To address this problem, we propose an unsupervised domain adaptation (DA) method that does not require labeled training data, and thus can maintain detection performance in the target domain at a low cost. We applied Correlation alignment (CORAL) DA and adversarial DA to our region-based vehicle detector and improved the detection accuracy by over 10% in the target domain. We further improved adversarial DA by utilizing the reconstruction loss to facilitate learning semantic features. Our proposed method achieved slightly better performance than the accuracy achieved with the labeled training data of the target domain. We demonstrated that our improved DA method could achieve almost the same level of accuracy at a lower cost than non-DA methods with a sufficient amount of labeled training data of the target domain.
机译:最近,基于深度学习的对象探测器已广泛用于车辆检测,并有助于性能措施的急剧提高。然而,深度学习需要大量的训练数据,并且当车辆检测的目标区域(目标域)与训练数据(源域)不同时,检测性能显着降低。为了解决这个问题,我们提出了一种无监督的域适应(DA)方法,不需要标记的训练数据,因此可以以低成本维持目标域中的检测性能。我们将相关对准(珊瑚)DA和逆势地DA施加到基于地区的车辆检测器,并在目标域中提高了检测精度超过10%。通过利用重建损失来促进学习语义特征,我们进一步改善了对抗性DA。我们所提出的方法比使用目标域的标记训练数据实现的精度略微更好。我们证明,我们的改进的DA方法可以以与具有足够量标记的目标域的标记训练数据的非DA方法来实现几乎相同的精度水平。

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