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Object detection process of domestic high-resolution building remote sensing image based on weak light enhancement

Published: 27 December 2021 Publication History

Abstract

Remote sensing images play an important role in acquiring geographic data, acquiring earth resources and emergency disasters. However, the obtained remote sensing images often have some problems, such as low contrast, poor visibility, blur and so on. This paper presents a building object detection process based on weak light enhancement of domestic high-resolution remote sensing images. The whole process mainly includes image enhancement and object detection. Using unsupervised Generative Adversarial Net, image enhancement training can be carried out without low / normal light image pairs, and the enhanced image effect can be detected through object detection algorithm. The experimental results show that the detection process is very helpful to the accuracy and efficiency of building object detection.

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      cover image ACM Other conferences
      ICBDT '21: Proceedings of the 4th International Conference on Big Data Technologies
      September 2021
      189 pages
      ISBN:9781450385091
      DOI:10.1145/3490322
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      Published: 27 December 2021

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