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Negative Bootstrapping for Weakly Supervised Target Detection in Remote Sensing Images

机译:负引导,用于遥感图像中的弱监督目标检测

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When training a classifier in a traditional weakly supervised learning scheme, negative samples are obtained by randomly sampling. However, it may bring deterioration or fluctuation for the performance of the classifier during the iterative training process. Considering a classifier is inclined to misclassify negative examples which resemble positive ones, comprising these misclassified and informative negatives should be important for enhancing the effectiveness and robustness of the classifier. In this paper, we propose to integrate Negative Bootstrapping scheme into weakly supervised learning framework to achieve effective target detection in remote sensing images. Compared with traditional weakly supervised target detection schemes, this method mainly has three advantages. Firstly, our model training framework converges more stable and faster by selecting the most discriminative training samples. Secondly, on each iteration, we utilize the negative samples which are most easily misclassified to refine target detector, obtaining better performance. Thirdly, we employ a pre-trained convolutional neural network (CNN) model named Caffe to extract high-level features from RSIs, which carry more semantic meanings and hence yield effective image representation. Comprehensive evaluations on a high resolution airplane dataset and comparisons with state-of-the-art weakly supervised target detection approaches demonstrate the effectiveness and robustness of the proposed method.
机译:在传统的弱监督学习方案中训练分类器时,可通过随机采样获得负样本。但是,它可能会在迭代训练过程中为分类器的性能带来恶化或波动。考虑到分类器倾向于对类似于阳性样本的否定样本进行错误分类,包括这些分类错误且信息丰富的阴性样本对于提高分类器的有效性和鲁棒性很重要。在本文中,我们建议将负自举方案整合到弱监督学习框架中,以实现对遥感图像的有效目标检测。与传统的弱监督目标检测方案相比,该方法主要具有三个优点。首先,我们的模型训练框架通过选择最具区分性的训练样本来更加稳定和快速地收敛。其次,在每次迭代中,我们利用最容易错误分类的负样本来精炼目标检测器,从而获得更好的性能。第三,我们使用一种称为Caffe的预训练卷积神经网络(CNN)模型从RSI中提取高级特征,这些特征具有更多的语义含义,因此可以产生有效的图像表示。对高分辨率飞机数据集的综合评估以及与最新的弱监督目标检测方法的比较证明了该方法的有效性和鲁棒性。

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