首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >APPLICATION OF SEMANTIC SEGMENTATION WITH FEW LABELS IN THE DETECTION OF WATER BODIES FROM PERUSAT-1 SATELLITE’S IMAGES
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APPLICATION OF SEMANTIC SEGMENTATION WITH FEW LABELS IN THE DETECTION OF WATER BODIES FROM PERUSAT-1 SATELLITE’S IMAGES

机译:用少数标签在覆盖卫星图像中检测水体中的语义分割

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Remote sensing is widely used to monitor earth surfaces with the main objective of extracting information from it. Such is the case of water surface, which is one of the most affected extensions when flood events occur, and its monitoring helps in the analysis of detecting such affected areas, considering that adequately defining water surfaces is one of the biggest problems that Peruvian authorities are concerned with. In this regard, semiautomatic mapping methods improve this monitoring, but this process remains a time-consuming task and into the subjectivity of the experts.In this work, we present a new approach for segmenting water surfaces from satellite images based on the application of convolutional neural networks. First, we explore the application of a U-Net model and then a transfer knowledge-based model. Our results show that both approaches are comparable when trained using an 680-labelled satellite image dataset; however, as the number of training samples is reduced, the performance of the transfer knowledge-based model, which combines high and very high image resolution characteristics, is improved.
机译:遥感广泛用于监测地球表面,主要目的是从中提取信息。这种情况是水面的情况,这是当发生洪水事件时受影响最大的延伸之一,并且其监测有助于检测这种受影响的地区的分析,考虑到充分限制水面是秘鲁当局的最大问题之一关注于。在这方面,半自动映射方法改善了这一监测,但这种过程仍然是耗时的任务和专家的主观性。在这项工作中,我们提出了一种基于卷积的应用分割水面的新方法。神经网络。首先,我们探讨U-Net模型的应用,然后探索转移知识的模型。我们的研究结果表明,在使用680标记的卫星图像数据集的训练时,两种方法都是可比的;然而,随着训练样本的数量减少,改善了基于转移知识的模型的性能,其结合了高和非常高的图像分辨率特性。

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