Volumetric performance capture from minimal camera viewpoints
This enables high-end volumetric performance capture in on-set and prosumer scenarios where cost or time constraints limit camera count.
The paper tackles the problem of high-fidelity volumetric reconstruction of human performance from a minimal set of camera viewpoints, achieving similar reconstruction error to methods requiring double or more viewpoints.
We present a convolutional autoencoder that enables high fidelity volumetric reconstructions of human performance to be captured from multi-view video comprising only a small set of camera views. Our method yields similar end-to-end reconstruction error to that of a probabilistic visual hull computed using significantly more (double or more) viewpoints. We use a deep prior implicitly learned by the autoencoder trained over a dataset of view-ablated multi-view video footage of a wide range of subjects and actions. This opens up the possibility of high-end volumetric performance capture in on-set and prosumer scenarios where time or cost prohibit a high witness camera count.