资源论文Ambient Occlusion via Compressive Visibility Estimation

Ambient Occlusion via Compressive Visibility Estimation

2019-12-18 | |  41 |   38 |   0

Abstract

There has been emerging interest on recovering traditionally challenging intrinsic scene properties. In this paper, we present a novel computational imaging solution for recovering the ambient occlusion (AO) map of an object. AO measures how much light from all different directions can reach a surface point without being blocked by selfocclusions. Previous approaches either require obtaining highly accurate surface geometry or acquiring a large number of images. We adopt a compressive sensing framework that captures the object under strategically coded lighting directions. We show that this incident illumination fifield exhibits some unique properties suitable for AO recovery: every rays contribution to the visibility function is binary while their distribution for AO measurement is sparse. This enables a sparsity-prior based solution for iteratively recovering the surface normal, the surface albedo, and the visibility function from a small number of images. To physically implement the scheme, we construct an encodable directional light source using the light fifield probe. Experiments on synthetic and real scenes show that our approach is both reliable and accurate with signifificantly reduced size of input

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