Chun ZHANG,Yi GE,Yue REN,Fei GAO,Yong HAN,Siyuan DONG,Jieying QIN,Ke XU,Jing LÜ,Yanfen GAO
As black and odorous water bodies in rural areas have negative influence to environment, it is important to monitor the rural black and odorous water bodies by high resolution remote sensing. While, the spectral curve from remote sensing of rural black and odorous is similar to some vegetation, green roofs and greenhouses, which bring difficulties to identify the rural black and odorous in remote sensing images with satisfactory repeatability and accuracy, and automation, by using the color purity on a Commission Internationale de L’Eclairage (CIE) model and spectroscopic method. Thus, we collected and interpreted 325 rural black and odorous water bodies by GF1/2/6, covering several counties in Xi’an and including various type of polluted object, to train the model using DeeplabV3+ with ResNet101 as the backbone to identify the rural black and odorous water bodies, in which we imported the Efficient Channel Attention (ECA) and pre-processed the samples by increasing the brightness and correcting the color difference. The F1-score, MIoU (Mean Intersection over Union), IoU (Intersection over Union) and FOR (False Omission Rate) of the model were 0.931, 0.935, 0.935 and 0.085 respectively, which indicated that the model could efficiently, accurately, and repeatedly identify rural black and odorous water bodies from high-resolution remote sensing images and offer assistance for government departments to regulate rural black and odorous water bodies.