“…• Monocular depth estimation via adversarial training, a deep architecture with skip connections and a robust compound objective function directly supervised using this framework to outperform prior contemporary work [5,7,14,20,31,36,62,66]. • Sparse to dense depth completion via the same multitask model, capable of generating a dense depth output given a sparse depth input captured via a LiDAR sensor with results superior to prior contemporary work [10,16,40,50,54]. • Unique leverage of both synthetic [17] and real-world datasets [54] to ensure high-density complete depth outputs, despite such levels of density not existing in any real-world training images.…”