• Corpus ID: 247011651

SODA: Site Object Detection dAtaset for Deep Learning in Construction

  title={SODA: Site Object Detection dAtaset for Deep Learning in Construction},
  author={Rui Duan and Hui Deng and Mao Tian and Yichuan Deng and Jia-Jheng Lin},
Computer vision-based deep learning object detection algorithms have been developed sufficiently powerful to support the ability to recognize various objects. Although there are currently general datasets for object detection, there is still a lack of large-scale, open-source dataset for the construction industry, which limits the developments of object detection algorithms as they tend to be data-hungry. Therefore, this paper develops a new large-scale image dataset specifically collected and… 



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