2023
DOI: 10.3389/frsen.2022.1100012
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Uncertainty is not sufficient for identifying noisy labels in training data for binary segmentation of building footprints

Abstract: Obtaining high quality labels is a major challenge for the application of deep neural networks in the remote sensing domain. A common way of acquiring labels is the usage of crowd sourcing which can provide much needed training data sets but also often contains incorrect labels which can affect the training process of a deep neural network significantly. In this paper, we exploit uncertainty to identify a certain type of label noise for semantic segmentation of buildings in satellite imagery. That type of labe… Show more

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“…When we talk about real data, noise is an inevitable component, with at least 5% even under the strictest controls [27]. In this study, the term "data denoising" refers to the use of filtering to lessen the effect of noise on the data.…”
Section: Data Denoisingmentioning
confidence: 99%
“…When we talk about real data, noise is an inevitable component, with at least 5% even under the strictest controls [27]. In this study, the term "data denoising" refers to the use of filtering to lessen the effect of noise on the data.…”
Section: Data Denoisingmentioning
confidence: 99%