A while back I wrote a piece on the Services-As-Software business model for AI, where you take a workflow that is largely human today, keep the same user interface, but replace the rest of the workflow with automation. Today I want to explain why the first companies to adopt services-as-software models will end up dominating multiple markets — sometimes unrelated ones.
There are two pieces to understanding this opportunity. First, it exists because every AI company I am invested in that is working with a services-as-software business model is struggling with the same question — should they provide their services to other businesses? Or should they be full stack and compete with the other market players, or both? Read More
Daily Archives: June 21, 2020
Unsupervised Learning of Probably Symmetric Deformable 3D Objects from Images in the Wild
We propose a method to learn 3D deformable object categories from raw single-view images, without external supervision. The method is based on an autoencoder that factors each input image into depth, albedo, viewpoint and illumination. In order to disentangle these components without supervision, we use the fact that many object categories have, at least in principle, a symmetric structure. We show that reasoning about illumination allows us to exploit the underlying object symmetry even if the appearance is not symmetric due to shading. Furthermore, we model objects that are probably, but not certainly, symmetric by predicting a symmetry probability map, learned end-to-end with the other components of the model. Our experiments show that this method can recover very accurately the 3D shape of human faces, cat faces and cars from single-view images, without any supervision or a prior shape model. On benchmarks, we demonstrate superior accuracy compared to another method that uses supervision at the level of 2D image correspondences. Read More
#human, #image-recognition