International Journal of Digital Earth (Dec 2023)

Semantic segmentation for plastic-covered greenhouses and plastic-mulched farmlands from VHR imagery

  • Bowen Niu,
  • Quanlong Feng,
  • Shuai Su,
  • Zhi Yang,
  • Sihang Zhang,
  • Shaotong Liu,
  • Jiudong Wang,
  • Jianyu Yang,
  • Jianhua Gong

DOI
https://doi.org/10.1080/17538947.2023.2275657
Journal volume & issue
Vol. 16, no. 2
pp. 4553 – 4572

Abstract

Read online

ABSTRACTDue to their important role in maintaining temperature and soil moisture, agricultural plastic covers have been widely utilized around the globe for improving crop-growing conditions, which include both plastic-covered greenhouses (PCGs) and plastic-mulched farmlands (PMFs). However, it is a challenging and long-neglected issue to separate PCGs from PMFs due to their spectral similarity. The objective of this study is to propose a deep semantic segmentation model for accurate PCG and PMF mapping based on very high-resolution satellite images and to improve the model’s spatial generalization capability using a transfer learning strategy. Specifically, the proposed semantic segmentation model has an encoder-decoder structure, where the encoder is composed of a new convolutional neural network for discriminative spatial feature learning, while the decoder utilizes a multi-task strategy to improve the predictions on the boundaries. Meanwhile, a transfer learning framework is adopted to increase mapping performance and generalization ability under limited samples. Experimental results in several typical regions across the Eurasian continent show that the proposed model could separate PCGs from PMFs accurately with a mean overall accuracy of 94.49% and an average mIoU of 0.8377. Ablation studies verify the role of encoder-decoder and transfer learning strategy in improving classification performance.

Keywords