Minimizing Manual Labeling Effort for The Semantic Segmentation of Aerial Images

2021 IEEE Statistical Signal Processing Workshop (SSP)(2021)

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摘要
Many modern applications rely on machine learning to fulfill their purpose. However, machine learning, especially the popular deep learning, requires a sufficient amount of labeled data to train models. For some tasks and in some domains, such as aerial images, labeling data is very time-consuming and thus expensive. We therefore propose strategies using unsupervised learning techniques to identify a subset of the input data which actually needs to be labeled by an expert in order to train a well-performing model. With our strategies, which involve less manual labeling effort, we were able to reduce the amount of training data required to 16%. At the same time, the model trained with this small subset achieved better semantic segmentation performance (average accuracy increase: 0.6%, average mIoU increase: 1.3%) for aerial images than a model trained with the full dataset.
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关键词
Semantic Segmentation,Aerial Images,Neural Networks,Deep Learning,Semi-Supervised Learning
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