Part 2 of "How the Mobile Phone Became a Camera", by Milanfar @ICME Keynote
Title: How the Mobile Phone Became a Camera (Part 2: Modern Technology)
Abstract:
The first camera phone was sold in 2000, when taking pictures with your phone was an oddity, and sharing pictures online was unheard-of. Today, barely twenty years later, the smartphone is more camera than phone. How did this happen? This transformation was enabled by advances in computational photography — the science and engineering of making great images from small form factor, mobile cameras. Modern algorithmic and computing advances, including machine learning, have changed the rules of photography, bringing to it new modes of capture, post-processing, storage, and sharing. In this talk, I’ll give a brief history of digital and computational photography (Part 1) and describe some of the key recent advances of this technology, including burst photography and super-resolution (Part 2).
Видео Part 2 of "How the Mobile Phone Became a Camera", by Milanfar @ICME Keynote канала Peyman Milanfar
Abstract:
The first camera phone was sold in 2000, when taking pictures with your phone was an oddity, and sharing pictures online was unheard-of. Today, barely twenty years later, the smartphone is more camera than phone. How did this happen? This transformation was enabled by advances in computational photography — the science and engineering of making great images from small form factor, mobile cameras. Modern algorithmic and computing advances, including machine learning, have changed the rules of photography, bringing to it new modes of capture, post-processing, storage, and sharing. In this talk, I’ll give a brief history of digital and computational photography (Part 1) and describe some of the key recent advances of this technology, including burst photography and super-resolution (Part 2).
Видео Part 2 of "How the Mobile Phone Became a Camera", by Milanfar @ICME Keynote канала Peyman Milanfar
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