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首页> 外文期刊>Journal of Applied Remote Sensing >Knowledge-guided golf course detection using a convolutional neural network fine-tuned on temporally augmented data
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Knowledge-guided golf course detection using a convolutional neural network fine-tuned on temporally augmented data

机译:知识引导的高尔夫球场检测使用卷积神经网络在时间上增强数据上微调

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摘要

The tremendous success of deep learning models such as convolutional neural networks (CNNs) in computer vision provides a method for similar problems in the field of remote sensing. Although research on repurposing pretrained CNN to remote sensing tasks is emerging, the scarcity of labeled samples and the complexity of remote sensing imagery still pose challenges. We developed a knowledge-guided golf course detection approach using a CNN fine-tuned on temporally augmented data. The proposed approach is a combination of knowledge-driven region proposal, data-driven detection based on CNN, and knowledge-driven postprocessing. To confront data complexity, knowledge-derived cooccurrence, composition, and area-based rules are applied sequentially to propose candidate golf regions. To confront sample scarcity, we employed data augmentation in the temporal domain, which extracts samples from multitemporal images. The augmented samples were then used to fine-tune a pretrained CNN for golf detection. Finally, commission error was further suppressed by postprocessing. Experiments conducted on GF-1 imagery prove the effectiveness of the proposed approach.
机译:计算机视觉中的深度学习模型(如卷积神经网络(CNN))的巨大成功提供了一种在遥感领域中存在类似问题的方法。虽然对遥感任务的重新灌浆的CNN进行了研究的研究是出现的,但标记样本的稀缺性和遥感图像的复杂性仍然存在挑战。我们在时间上增强数据上使用CNN进行了微调的CNN开发了知识引导的高尔夫球场检测方法。该方法是知识驱动区域提案,基于CNN的数据驱动检测的组合,以及知识驱动的后处理。为了依次依次施加数据复杂性,知识衍生的联合电流,构图和基于面积的规则,以提出候选高尔夫地区。为了面对样本稀缺,我们使用在时间域中的数据增强,从而提取来自多型图像的样本。然后使用增强的样品来微调预染色的CNN以进行高尔夫检测。最后,通过后处理进一步抑制了佣金错误。在GF-1图像上进行的实验证明了所提出的方法的有效性。

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