“…Recently, high performance computing, ML, and deep learning approaches have provided solutions for efficient and accurate landscape feature mapping across difference ecosystems. In the Arctic, studies have delineated polygonal tundra geomorphologies [45,79], arctic lake features [80], glacier extents [48,81,82], and coastal features [40][41][42]83]. In this research, we propose an automated pipeline using traditional ML based methods-random forest, and xgboost, and a deep neural network based U-Net architecture for arctic coastal mapping and compare their performances.…”