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A Weakly Supervised Method for Mud Detection in Ores Based on Deep Active Learning

机译:基于深度活跃学习的矿石泥浆检测方法弱监督

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Automatically detecting mud in bauxite ores is important and valuable, with which we can improve productivity and reduce pollution. However, distinguishing mud and ores in a real scene is challenging for their similarity in shape, color, and texture. Moreover, training a deep learning model needs a large amount of exactly labeled samples, which is expensive and time consuming. Aiming at the challenging problem, this paper proposed a novel weakly supervised method based on deep active learning (AL), named YOLO-AL. The method uses the YOLO-v3 model as the basic detector, which is initialized with the pretrained weights on the MS COCO dataset. Then, an AL framework-embedded YOLO-v3 model is constructed. In the AL process, it iteratively fine-tunes the last few layers of the YOLO-v3 model with the most valuable samples, which is selected by a Less Confident (LC) strategy. Experimental results show that the proposed method can effectively detect mud in ores. More importantly, the proposed method can obviously reduce the labeled samples without decreasing the detection accuracy.
机译:在铝土矿矿石中自动检测泥浆是重要的和有价值的,我们可以提高生产率并减少污染。然而,区分泥浆和矿石在真正的场景中是挑战它们的形状,颜色和纹理的相似性。此外,培训深度学习模型需要大量标记的样本,这昂贵且耗时。旨在挑战问题,本文提出了一种基于深度活跃学习(AL)的新型弱监督方法,名为Y​​OLO-AL。该方法使用YOLO-V3模型作为基本检测器,其在MS Coco DataSet上的预制权重初始化。然后,构建了AL框架嵌入式的YOLO-V3模型。在AL过程中,它迭代地用最有价值的样品透视yolo-v3模型的最后几层,这些样本由不太自信的(LC)策略选择。实验结果表明,该方法可以有效地检测矿石中的泥浆。更重要的是,所提出的方法可以明显减少标记的样品而不降低检测精度。

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