Joseph Smarr (Google) and Chris Lamb (NVIDIA)
Hanalei Lookout - Grand Scale "Two-Pass" Dreamscape Detail My initial experiments in computational photography were driven by my desire to create photo-based depictions of the world that better convey the feeling of a place and the way we really experience it: not just visually, but also viscerally and cognitively. My grand format landscape images that result from these experiments are inspired by the 19th century master paintings of the Hudson River School and by the great romantic European landscape paintings that preceded them. Like those works, some of which reached ten feet in width, I've endeavored to create uncannily immersive and idyllic scenic experiences that deliver both breadth and detail. Now, capitalizing on recent technological developments in deep learning and artificial intelligence, along with the hard work and ingenuity of my generous engineering colleagues, Joseph Smarr (Google) and Chris Lamb (NVIDIA), I've been able to push my artwork in an intriguing new direction. Thanks to custom enhancements made to Google's DeepDream software, it has become possible for me to imbue my giant landscape images with a stunning degree of unexpected form and content. My latest work, Grand Scale “Two-Pass” Dreamscape Details, starts with an upscaled detail of one of my panoramic photos that has been transformed with one style of neural network “hallucination” and then further upscales the image before applying a second pass of artificial intelligence with a different style of hallucination. Unlike my previous “full scene” Dreamscapes, these large works are clearly hallucinatory even from a distance, yet contain intricate details that defy expectations.