95 / 2021-07-21 22:40:26
Cloud Detection Using Fully Convolutional Network with Zynq SoC for Spaceborne Application
终稿
Ximing Yu / Harbin Institute of Technology
Yu Peng / Harbin Institute of Technology
Liansheng Liu / Harbin Institute of Technology
Cloud detection is the important step to avoid the interference of contaminated area in the remote sensing image. At present, the onboard cloud detection using deep learning is an attractive idea to provide the solution for detecting cloud contaminated region with high accuracy in real time. However, the method based on deep learning has large amount of model parameters and requires high computation resource, which are difficult for deployment in the onboard scenario. To address this issue, the cloud detection using the fully convolutional network with Zynq SoC is proposed in this paper. Multiple convolution layers in fully convolutional network are used to extract deep semantic features to improve the accuracy of cloud detection in different scenarios. And a custom computing architecture with full-precision parameters is conducted, which utilizes the loop tiling for feature maps and general matrix multiplication with parallel computing for convolution. The proposed network is deployed under the limited hardware resource. Experimental results indicate that the mean intersection over union of the proposed method is 90.39%, and the pixel accuracy reaches 95.79%. Compared with the implementation on ARM, the proposed method can achieve about 18.84 times speedup.
重要日期
  • 会议日期

    10月21日

    2021

    10月23日

    2021

  • 10月26日 2021

    注册截止日期

主办单位
Southeast University, China
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