“…Although several segmentation models exist in the literature, including FCN8s (Long, Shelhamer, and Darrell 2015), SegNet (Badrinarayanan, Kendall, andCipolla 2017), andPSPNet (Zhao et al 2017), we employed the Deeplabv3+ model (Chen et al, 2018), as it demonstrated excellent accuracy at the Pascal Visual Object Classification challenge as well as on the Cityscapes test dataset, and consistently yielded some of the highest accuracy in various comparisons. For example, Deeplabv3+ exhibited high accuracy (82.1% mIoU) among segmentation models for the Cityscapes test dataset 1 , and 89.0% accuracy on the "PASCAL VOC 2012 datasets", and has therefore been used in several studies for image processing (e.g., Wang and Vermeulen 2020;Liu et al 2019;Du, Ning, and Yan 2020).…”